コード例 #1
0
ファイル: l1.py プロジェクト: cuihantao/cvxopt
    def Fkkt(W): 

        # Returns a function f(x, y, z) that solves
        #
        # [ 0  0  P'      -P'      ] [ x[:n] ]   [ bx[:n] ]
        # [ 0  0 -I       -I       ] [ x[n:] ]   [ bx[n:] ]
        # [ P -I -W1^2     0       ] [ z[:m] ] = [ bz[:m] ]
        # [-P -I  0       -W2      ] [ z[m:] ]   [ bz[m:] ]
        #
        # On entry bx, bz are stored in x, z.
        # On exit x, z contain the solution, with z scaled (W['di'] .* z is
        # returned instead of z). 

        d1, d2 = W['d'][:m], W['d'][m:]
        D = 4*(d1**2 + d2**2)**-1
        A = P.T * spdiag(D) * P
        lapack.potrf(A)

        def f(x, y, z):

            x[:n] += P.T * ( mul( div(d2**2 - d1**2, d1**2 + d2**2), x[n:]) 
                + mul( .5*D, z[:m]-z[m:] ) )
            lapack.potrs(A, x)

            u = P*x[:n]
            x[n:] =  div( x[n:] - div(z[:m], d1**2) - div(z[m:], d2**2) + 
                mul(d1**-2 - d2**-2, u), d1**-2 + d2**-2 )

            z[:m] = div(u-x[n:]-z[:m], d1)
            z[m:] = div(-u-x[n:]-z[m:], d2)

        return f
コード例 #2
0
ファイル: l1.py プロジェクト: Ovec8hkin/PySAR
    def Fkkt(W):

        # Returns a function f(x, y, z) that solves
        #
        # [ 0  0  P'      -P'      ] [ x[:n] ]   [ bx[:n] ]
        # [ 0  0 -I       -I       ] [ x[n:] ]   [ bx[n:] ]
        # [ P -I -W1^2     0       ] [ z[:m] ] = [ bz[:m] ]
        # [-P -I  0       -W2      ] [ z[m:] ]   [ bz[m:] ]
        #
        # On entry bx, bz are stored in x, z.
        # On exit x, z contain the solution, with z scaled (W['di'] .* z is
        # returned instead of z).

        d1, d2 = W['d'][:m], W['d'][m:]
        D = 4 * (d1**2 + d2**2)**-1
        A = P.T * spdiag(D) * P
        lapack.potrf(A)

        def f(x, y, z):

            x[:n] += P.T * (mul(div(d2**2 - d1**2, d1**2 + d2**2), x[n:]) +
                            mul(.5 * D, z[:m] - z[m:]))
            lapack.potrs(A, x)

            u = P * x[:n]
            x[n:] = div(
                x[n:] - div(z[:m], d1**2) - div(z[m:], d2**2) +
                mul(d1**-2 - d2**-2, u), d1**-2 + d2**-2)

            z[:m] = div(u - x[n:] - z[:m], d1)
            z[m:] = div(-u - x[n:] - z[m:], d2)

        return f
コード例 #3
0
    def F(W):
        """
        Return a function f(x,y,z) that solves
        [P , G' W^-1]  [ux]       [bx]
        [G ,  -W    ]  [uy]    =  [bz]

        """
        #d   =    spdiag(matrix(numpy.array(W['d'])))
        #dinv=    spdiag(matrix(numpy.array(W['di'])))
        d = spdiag(W['d'])
        dinv = spdiag(W['di'])

        #KKT1 =    d*( P * d + dinv )
        KKT1 = d * P * d + spdiag(matrix(1.0, (2 * dim, 1)))
        lapack.potrf(KKT1)

        #raw_input('inputpppp')
        def f(x, y, z):
            uz = -d * (x + P * z)
            #uz  =   matrix(numpy.linalg.solve(KKT1, uz))  # slow version
            #lapack.gesv(KKT1,uz)  #  JZ: gesv have cond issue
            lapack.potrs(KKT1, uz)
            x[:] = matrix(-z - d * uz)
            blas.copy(uz, z)

        return f
コード例 #4
0
def Fkkt(W):

    # Factor
    #
    #     S = A*D^-1*A' + I
    #
    # where D = 2*D1*D2*(D1+D2)^-1, D1 = d[:n]**2, D2 = d[n:]**2.

    d1, d2 = W['di'][:n]**2, W['di'][n:]**2

    # ds is square root of diagonal of D
    ds = sqrt(2.0) * div(mul(W['di'][:n], W['di'][n:]), sqrt(d1 + d2))
    d3 = div(d2 - d1, d1 + d2)

    # Asc = A*diag(d)^-1/2
    blas.copy(A, Asc)
    for k in range(m):
        blas.tbsv(ds, Asc, n=n, k=0, ldA=1, incx=m, offsetx=k)

    # S = I + A * D^-1 * A'
    blas.syrk(Asc, S)
    S[::m + 1] += 1.0
    lapack.potrf(S)

    def g(x, y, z):

        x[:n] = 0.5 * ( x[:n] - mul(d3, x[n:]) + \
                mul(d1, z[:n] + mul(d3, z[:n])) - \
                mul(d2, z[n:] - mul(d3, z[n:])) )
        x[:n] = div(x[:n], ds)

        # Solve
        #
        #     S * v = 0.5 * A * D^-1 * ( bx[:n]
        #             - (D2-D1)*(D1+D2)^-1 * bx[n:]
        #             + D1 * ( I + (D2-D1)*(D1+D2)^-1 ) * bz[:n]
        #             - D2 * ( I - (D2-D1)*(D1+D2)^-1 ) * bz[n:] )

        blas.gemv(Asc, x, v)
        lapack.potrs(S, v)

        # x[:n] = D^-1 * ( rhs - A'*v ).
        blas.gemv(Asc, v, x, alpha=-1.0, beta=1.0, trans='T')
        x[:n] = div(x[:n], ds)

        # x[n:] = (D1+D2)^-1 * ( bx[n:] - D1*bz[:n]  - D2*bz[n:] )
        #         - (D2-D1)*(D1+D2)^-1 * x[:n]
        x[n:] = div( x[n:] - mul(d1, z[:n]) - mul(d2, z[n:]), d1+d2 )\
                - mul( d3, x[:n] )

        # z[:n] = D1^1/2 * (  x[:n] - x[n:] - bz[:n] )
        # z[n:] = D2^1/2 * ( -x[:n] - x[n:] - bz[n:] ).
        z[:n] = mul(W['di'][:n], x[:n] - x[n:] - z[:n])
        z[n:] = mul(W['di'][n:], -x[:n] - x[n:] - z[n:])

    return g
コード例 #5
0
ファイル: basispursuit.py プロジェクト: AlbertHolmes/cvxopt
def Fkkt(W):

    # Factor 
    #
    #     S = A*D^-1*A' + I 
    #
    # where D = 2*D1*D2*(D1+D2)^-1, D1 = d[:n]**2, D2 = d[n:]**2.

    d1, d2 = W['di'][:n]**2, W['di'][n:]**2    

    # ds is square root of diagonal of D
    ds = sqrt(2.0) * div( mul( W['di'][:n], W['di'][n:]), sqrt(d1+d2) )
    d3 =  div(d2 - d1, d1 + d2)
 
    # Asc = A*diag(d)^-1/2
    blas.copy(A, Asc)
    for k in range(m):
        blas.tbsv(ds, Asc, n=n, k=0, ldA=1, incx=m, offsetx=k)

    # S = I + A * D^-1 * A'
    blas.syrk(Asc, S)
    S[::m+1] += 1.0 
    lapack.potrf(S)

    def g(x, y, z):

        x[:n] = 0.5 * ( x[:n] - mul(d3, x[n:]) + \
                mul(d1, z[:n] + mul(d3, z[:n])) - \
                mul(d2, z[n:] - mul(d3, z[n:])) )
        x[:n] = div( x[:n], ds) 

        # Solve
        #
        #     S * v = 0.5 * A * D^-1 * ( bx[:n] 
        #             - (D2-D1)*(D1+D2)^-1 * bx[n:] 
        #             + D1 * ( I + (D2-D1)*(D1+D2)^-1 ) * bz[:n]
        #             - D2 * ( I - (D2-D1)*(D1+D2)^-1 ) * bz[n:] )
	    
        blas.gemv(Asc, x, v)
        lapack.potrs(S, v)
	
        # x[:n] = D^-1 * ( rhs - A'*v ).
        blas.gemv(Asc, v, x, alpha=-1.0, beta=1.0, trans='T')
        x[:n] = div(x[:n], ds)

        # x[n:] = (D1+D2)^-1 * ( bx[n:] - D1*bz[:n]  - D2*bz[n:] )
        #         - (D2-D1)*(D1+D2)^-1 * x[:n]         
        x[n:] = div( x[n:] - mul(d1, z[:n]) - mul(d2, z[n:]), d1+d2 )\
                - mul( d3, x[:n] )
	    
        # z[:n] = D1^1/2 * (  x[:n] - x[n:] - bz[:n] )
        # z[n:] = D2^1/2 * ( -x[:n] - x[n:] - bz[n:] ).
        z[:n] = mul( W['di'][:n],  x[:n] - x[n:] - z[:n] ) 
        z[n:] = mul( W['di'][n:], -x[:n] - x[n:] - z[n:] ) 

    return g
コード例 #6
0
 def get_psd_matrix(p):
     tmp = matrix(normal((p)**2),(p,p))/2.0
     tmp = tmp + tmp.T
     while(1):
         try:
             lapack.potrf(+tmp)
             break
         except:
             tmp = tmp + .1*eye(p)
     return tmp
コード例 #7
0
ファイル: l1regls.py プロジェクト: sanurielf/cvxopt
    def Fkkt(W):

        # Factor 
        #
        #     S = A*D^-1*A' + I 
        #
        # where D = 2*D1*D2*(D1+D2)^-1, D1 = d[:n]**-2, D2 = d[n:]**-2.

        d1, d2 = W['di'][:n]**2, W['di'][n:]**2

        # ds is square root of diagonal of D
        ds = math.sqrt(2.0) * div( mul( W['di'][:n], W['di'][n:]), 
            sqrt(d1+d2) )
        d3 =  div(d2 - d1, d1 + d2)
     
        # Asc = A*diag(d)^-1/2
        Asc = A * spdiag(ds**-1)

        # S = I + A * D^-1 * A'
        blas.syrk(Asc, S)
        S[::m+1] += 1.0 
        lapack.potrf(S)

        def g(x, y, z):

            x[:n] = 0.5 * ( x[:n] - mul(d3, x[n:]) + 
                mul(d1, z[:n] + mul(d3, z[:n])) - mul(d2, z[n:] - 
                mul(d3, z[n:])) )
            x[:n] = div( x[:n], ds) 

            # Solve
            #
            #     S * v = 0.5 * A * D^-1 * ( bx[:n] - 
            #         (D2-D1)*(D1+D2)^-1 * bx[n:] + 
            #         D1 * ( I + (D2-D1)*(D1+D2)^-1 ) * bzl[:n] - 
            #         D2 * ( I - (D2-D1)*(D1+D2)^-1 ) * bzl[n:] )
                
            blas.gemv(Asc, x, v)
            lapack.potrs(S, v)
            
            # x[:n] = D^-1 * ( rhs - A'*v ).
            blas.gemv(Asc, v, x, alpha=-1.0, beta=1.0, trans='T')
            x[:n] = div(x[:n], ds)

            # x[n:] = (D1+D2)^-1 * ( bx[n:] - D1*bzl[:n]  - D2*bzl[n:] ) 
            #         - (D2-D1)*(D1+D2)^-1 * x[:n]         
            x[n:] = div( x[n:] - mul(d1, z[:n]) - mul(d2, z[n:]), d1+d2 )\
                - mul( d3, x[:n] )
                
            # zl[:n] = D1^1/2 * (  x[:n] - x[n:] - bzl[:n] )
            # zl[n:] = D2^1/2 * ( -x[:n] - x[n:] - bzl[n:] ).
            z[:n] = mul( W['di'][:n],  x[:n] - x[n:] - z[:n] ) 
            z[n:] = mul( W['di'][n:], -x[:n] - x[n:] - z[n:] ) 

        return g
コード例 #8
0
ファイル: l1regls.py プロジェクト: biss/thesisRelated
    def Fkkt(W):

        # Factor
        #
        #     S = A*D^-1*A' + I
        #
        # where D = 2*D1*D2*(D1+D2)^-1, D1 = d[:n]**-2, D2 = d[n:]**-2.

        d1, d2 = W['di'][:n]**2, W['di'][n:]**2
        print 'printing: ', W['di']

        # ds is square root of diagonal of D
        ds = math.sqrt(2.0) * div(mul(W['di'][:n], W['di'][n:]), sqrt(d1 + d2))
        d3 = div(d2 - d1, d1 + d2)

        Asc = matrix(0.0, (m, n))
        # Asc = A*diag(d)^-1/2
        Asc = A * spdiag(ds**-1)

        # S = I + A * D^-1 * A'
        blas.syrk(Asc, S)
        S[::m + 1] += 1.0
        lapack.potrf(S)

        def g(x, y, z):

            x[:n] = 0.5 * (x[:n] - mul(d3, x[n:]) + mul(
                d1, z[:n] + mul(d3, z[:n])) - mul(d2, z[n:] - mul(d3, z[n:])))
            x[:n] = div(x[:n], ds)

            # Solve
            #
            #     S * v = 0.5 * A * D^-1 * ( bx[:n] -
            #         (D2-D1)*(D1+D2)^-1 * bx[n:] +
            #         D1 * ( I + (D2-D1)*(D1+D2)^-1 ) * bzl[:n] -
            #         D2 * ( I - (D2-D1)*(D1+D2)^-1 ) * bzl[n:] )

            blas.gemv(Asc, x, v)
            lapack.potrs(S, v)

            # x[:n] = D^-1 * ( rhs - A'*v ).
            blas.gemv(Asc, v, x, alpha=-1.0, beta=1.0, trans='T')
            x[:n] = div(x[:n], ds)

            # x[n:] = (D1+D2)^-1 * ( bx[n:] - D1*bzl[:n]  - D2*bzl[n:] )
            #         - (D2-D1)*(D1+D2)^-1 * x[:n]
            x[n:] = div( x[n:] - mul(d1, z[:n]) - mul(d2, z[n:]), d1+d2 )\
                - mul( d3, x[:n] )

            # zl[:n] = D1^1/2 * (  x[:n] - x[n:] - bzl[:n] )
            # zl[n:] = D2^1/2 * ( -x[:n] - x[n:] - bzl[n:] ).
            z[:n] = mul(W['di'][:n], x[:n] - x[n:] - z[:n])
            z[n:] = mul(W['di'][n:], -x[:n] - x[n:] - z[n:])

        return g
コード例 #9
0
ファイル: l1.py プロジェクト: Ovec8hkin/PySAR
    def Fkkt(W):

        # Returns a function f(x, y, z) that solves
        #
        # [ 0  0  P'      -P'      ] [ x[:n] ]   [ bx[:n] ]
        # [ 0  0 -I       -I       ] [ x[n:] ]   [ bx[n:] ]
        # [ P -I -D1^{-1}  0       ] [ z[:m] ] = [ bz[:m] ]
        # [-P -I  0       -D2^{-1} ] [ z[m:] ]   [ bz[m:] ]
        #
        # where D1 = diag(di[:m])^2, D2 = diag(di[m:])^2 and di = W['di'].
        #
        # On entry bx, bz are stored in x, z.
        # On exit x, z contain the solution, with z scaled (di .* z is
        # returned instead of z).

        # Factor A = 4*P'*D*P where D = d1.*d2 ./(d1+d2) and
        # d1 = d[:m].^2, d2 = d[m:].^2.

        di = W['di']
        d1, d2 = di[:m]**2, di[m:]**2
        D = div(mul(d1, d2), d1 + d2)
        Ds = spdiag(2 * sqrt(D))
        base.gemm(Ds, P, Ps)
        blas.syrk(Ps, A, trans='T')
        lapack.potrf(A)

        def f(x, y, z):

            # Solve for x[:n]:
            #
            #    A*x[:n] = bx[:n] + P' * ( ((D1-D2)*(D1+D2)^{-1})*bx[n:]
            #        + (2*D1*D2*(D1+D2)^{-1}) * (bz[:m] - bz[m:]) ).

            blas.copy((mul(div(d1 - d2, d1 + d2), x[n:]) +
                       mul(2 * D, z[:m] - z[m:])), u)
            blas.gemv(P, u, x, beta=1.0, trans='T')
            lapack.potrs(A, x)

            # x[n:] := (D1+D2)^{-1} * (bx[n:] - D1*bz[:m] - D2*bz[m:]
            #     + (D1-D2)*P*x[:n])

            base.gemv(P, x, u)
            x[n:] = div(
                x[n:] - mul(d1, z[:m]) - mul(d2, z[m:]) + mul(d1 - d2, u),
                d1 + d2)

            # z[:m] := d1[:m] .* ( P*x[:n] - x[n:] - bz[:m])
            # z[m:] := d2[m:] .* (-P*x[:n] - x[n:] - bz[m:])

            z[:m] = mul(di[:m], u - x[n:] - z[:m])
            z[m:] = mul(di[m:], -u - x[n:] - z[m:])

        return f
コード例 #10
0
ファイル: l1.py プロジェクト: cuihantao/cvxopt
    def Fkkt(W): 

        # Returns a function f(x, y, z) that solves
        #
        # [ 0  0  P'      -P'      ] [ x[:n] ]   [ bx[:n] ]
        # [ 0  0 -I       -I       ] [ x[n:] ]   [ bx[n:] ]
        # [ P -I -D1^{-1}  0       ] [ z[:m] ] = [ bz[:m] ]
        # [-P -I  0       -D2^{-1} ] [ z[m:] ]   [ bz[m:] ]
        #
        # where D1 = diag(di[:m])^2, D2 = diag(di[m:])^2 and di = W['di'].
        #
        # On entry bx, bz are stored in x, z.
        # On exit x, z contain the solution, with z scaled (di .* z is
        # returned instead of z). 

        # Factor A = 4*P'*D*P where D = d1.*d2 ./(d1+d2) and
        # d1 = d[:m].^2, d2 = d[m:].^2.

        di = W['di']
        d1, d2 = di[:m]**2, di[m:]**2
        D = div( mul(d1,d2), d1+d2 )  
        Ds = spdiag(2 * sqrt(D))
        base.gemm(Ds, P, Ps)
        blas.syrk(Ps, A, trans = 'T')
        lapack.potrf(A)

        def f(x, y, z):

            # Solve for x[:n]:
            #
            #    A*x[:n] = bx[:n] + P' * ( ((D1-D2)*(D1+D2)^{-1})*bx[n:]
            #        + (2*D1*D2*(D1+D2)^{-1}) * (bz[:m] - bz[m:]) ).

            blas.copy(( mul( div(d1-d2, d1+d2), x[n:]) + 
                mul( 2*D, z[:m]-z[m:] ) ), u)
            blas.gemv(P, u, x, beta = 1.0, trans = 'T')
            lapack.potrs(A, x)

            # x[n:] := (D1+D2)^{-1} * (bx[n:] - D1*bz[:m] - D2*bz[m:]
            #     + (D1-D2)*P*x[:n])

            base.gemv(P, x, u)
            x[n:] =  div( x[n:] - mul(d1, z[:m]) - mul(d2, z[m:]) + 
                mul(d1-d2, u), d1+d2 )

            # z[:m] := d1[:m] .* ( P*x[:n] - x[n:] - bz[:m])
            # z[m:] := d2[m:] .* (-P*x[:n] - x[n:] - bz[m:]) 

            z[:m] = mul(di[:m],  u-x[n:]-z[:m])
            z[m:] = mul(di[m:], -u-x[n:]-z[m:])

        return f
コード例 #11
0
    def F(W):
        """
        Returns a function f(x, y, z) that solves

                      -diag(z)     = bx
            -diag(x) - r*r'*z*r*r' = bz

        where r = W['r'][0] = W['rti'][0]^{-T}.
        """

        rti = W['rti'][0]

        # t = rti*rti' as a nonsymmetric matrix.
        t = matrix(0.0, (n,n))
        blas.gemm(rti, rti, t, transB = 'T')

        # Cholesky factorization of tsq = t.*t.
        tsq = t**2
        lapack.potrf(tsq)

        def f(x, y, z):
            """
            On entry, x contains bx, y is empty, and z contains bz stored
            in column major order.
            On exit, they contain the solution, with z scaled
            (vec(r'*z*r) is returned instead of z).

            We first solve

               ((rti*rti') .* (rti*rti')) * x = bx - diag(t*bz*t)

            and take z = - rti' * (diag(x) + bz) * rti.
            """

            # tbst := t * bz * t
            tbst = +z
            cngrnc(t, tbst)

            # x := x - diag(tbst) = bx - diag(rti*rti' * bz * rti*rti')
            x -= tbst[::n+1]

            # x := (t.*t)^{-1} * x = (t.*t)^{-1} * (bx - diag(t*bz*t))
            lapack.potrs(tsq, x)

            # z := z + diag(x) = bz + diag(x)
            z[::n+1] += x

            # z := -vec(rti' * z * rti)
            #    = -vec(rti' * (diag(x) + bz) * rti
            cngrnc(rti, z, alpha = -1.0)

        return f
コード例 #12
0
ファイル: l2ac.py プロジェクト: AlbertHolmes/cvxopt
 def Fkkt(x, z, W):
     ds = (2.0 * div(1 + x**2, (1 - x**2)**2))**-0.5
     Asc = A * spdiag(ds)
     blas.syrk(Asc, S)
     S[::m+1] += 1.0 
     lapack.potrf(S)
     a = z[0]
     def g(x, y, z):
         x[:] = mul(x, ds) / a
         blas.gemv(Asc, x, v)
         lapack.potrs(S, v)
         blas.gemv(Asc, v, x, alpha = -1.0, beta = 1.0, trans = 'T')
         x[:] = mul(x, ds)  
     return g
コード例 #13
0
 def Fkkt(x, z, W):
     ds = (2.0 * div(1 + x**2, (1 - x**2)**2))**-0.5
     Asc = A * spdiag(ds)
     blas.syrk(Asc, S)
     S[::m+1] += 1.0 
     lapack.potrf(S)
     a = z[0]
     def g(x, y, z):
         x[:] = mul(x, ds) / a
         blas.gemv(Asc, x, v)
         lapack.potrs(S, v)
         blas.gemv(Asc, v, x, alpha = -1.0, beta = 1.0, trans = 'T')
         x[:] = mul(x, ds)  
     return g
コード例 #14
0
def F(x=None, z=None):
    if x is None: return 0, matrix(1.0, (n,1))
    X = V * spdiag(x) * V.T
    L = +X
    try: lapack.potrf(L)
    except ArithmeticError: return None
    f = - 2.0 * (log(L[0,0])  + log(L[1,1]))
    W = +V
    blas.trsm(L, W)    
    gradf = matrix(-1.0, (1,2)) * W**2
    if z is None: return f, gradf
    H = matrix(0.0, (n,n))
    blas.syrk(W, H, trans='T')
    return f, gradf, z[0] * H**2
コード例 #15
0
    def Fkkt(W):

        rti = W['rti'][0]

        # t = rti*rti' as a nonsymmetric matrix.
        t = matrix(0.0, (n, n))
        blas.gemm(rti, rti, t, transB='T')

        # Cholesky factorization of tsq = t.*t.
        tsq = t**2
        lapack.potrf(tsq)

        def f(x, y, z):
            """
            Solve
                          -diag(z)                           = bx
                -diag(x) - inv(rti*rti') * z * inv(rti*rti') = bs

            On entry, x and z contain bx and bs.  
            On exit, they contain the solution, with z scaled
            (inv(rti)'*z*inv(rti) is returned instead of z).

            We first solve 

                ((rti*rti') .* (rti*rti')) * x = bx - diag(t*bs*t) 

            and take z  = -rti' * (diag(x) + bs) * rti.
            """

            # tbst := t * zs * t = t * bs * t
            tbst = matrix(z, (n, n))
            cngrnc(t, tbst)

            # x := x - diag(tbst) = bx - diag(rti*rti' * bs * rti*rti')
            x -= tbst[::n + 1]

            # x := (t.*t)^{-1} * x = (t.*t)^{-1} * (bx - diag(t*bs*t))
            lapack.potrs(tsq, x)

            # z := z + diag(x) = bs + diag(x)
            z[::n + 1] += x

            # z := -rti' * z * rti = -rti' * (diag(x) + bs) * rti
            cngrnc(rti, z, alpha=-1.0)

        return f
コード例 #16
0
ファイル: mcsdp.py プロジェクト: sanurielf/cvxopt
    def Fkkt(W):
       
        rti = W['rti'][0]

        # t = rti*rti' as a nonsymmetric matrix.
        t = matrix(0.0, (n,n))
        blas.gemm(rti, rti, t, transB = 'T') 

        # Cholesky factorization of tsq = t.*t.
        tsq = t**2
        lapack.potrf(tsq)

        def f(x, y, z):
            """
            Solve
                          -diag(z)                           = bx
                -diag(x) - inv(rti*rti') * z * inv(rti*rti') = bs

            On entry, x and z contain bx and bs.  
            On exit, they contain the solution, with z scaled
            (inv(rti)'*z*inv(rti) is returned instead of z).

            We first solve 

                ((rti*rti') .* (rti*rti')) * x = bx - diag(t*bs*t) 

            and take z  = -rti' * (diag(x) + bs) * rti.
            """

            # tbst := t * zs * t = t * bs * t
            tbst = matrix(z, (n,n))
            cngrnc(t, tbst) 

            # x := x - diag(tbst) = bx - diag(rti*rti' * bs * rti*rti')
            x -= tbst[::n+1]

            # x := (t.*t)^{-1} * x = (t.*t)^{-1} * (bx - diag(t*bs*t))
            lapack.potrs(tsq, x)

            # z := z + diag(x) = bs + diag(x)
            z[::n+1] += x

            # z := -rti' * z * rti = -rti' * (diag(x) + bs) * rti 
            cngrnc(rti, z, alpha = -1.0)

        return f
コード例 #17
0
ファイル: RobustSTL.py プロジェクト: jfr311/RobustSTL
    def Fkkt(W): 
        d1, d2 = W['d'][:m], W['d'][m:]
        D = 4*(d1**2 + d2**2)**-1
        A = P.T * spdiag(D) * P
        lapack.potrf(A)

        def f(x, y, z):
            x[:n] += P.T * ( mul( div(d2**2 - d1**2, d1**2 + d2**2), x[n:]) 
                + mul( .5*D, z[:m]-z[m:] ) )
            lapack.potrs(A, x)

            u = P*x[:n]
            x[n:] =  div( x[n:] - div(z[:m], d1**2) - div(z[m:], d2**2) + 
                mul(d1**-2 - d2**-2, u), d1**-2 + d2**-2 )

            z[:m] = div(u-x[n:]-z[:m], d1)
            z[m:] = div(-u-x[n:]-z[m:], d2)
        return f
コード例 #18
0
ファイル: ubsdp.py プロジェクト: wsgan001/itce2011
    def F(W):
        """
        Generate a solver for

                                             A'(uz0) = bx[0]
                                          -uz0 - uz1 = bx[1] 
            A(ux[0]) - ux[1] - r0*r0' * uz0 * r0*r0' = bz0 
                     - ux[1] - r1*r1' * uz1 * r1*r1' = bz1.

        uz0, uz1, bz0, bz1 are symmetric m x m-matrices.
        ux[0], bx[0] are n-vectors.
        ux[1], bx[1] are symmetric m x m-matrices.

        We first calculate a congruence that diagonalizes r0*r0' and r1*r1':
 
            U' * r0 * r0' * U = I,  U' * r1 * r1' * U = S.

        We then make a change of variables

            usx[0] = ux[0],  
            usx[1] = U' * ux[1] * U  
              usz0 = U^-1 * uz0 * U^-T  
              usz1 = U^-1 * uz1 * U^-T 

        and define 

              As() = U' * A() * U'  
            bsx[1] = U^-1 * bx[1] * U^-T
              bsz0 = U' * bz0 * U  
              bsz1 = U' * bz1 * U.  

        This gives

                             As'(usz0) = bx[0]
                          -usz0 - usz1 = bsx[1] 
            As(usx[0]) - usx[1] - usz0 = bsz0 
                -usx[1] - S * usz1 * S = bsz1.


        1. Eliminate usz0, usz1 using equations 3 and 4,

               usz0 = As(usx[0]) - usx[1] - bsz0
               usz1 = -S^-1 * (usx[1] + bsz1) * S^-1.

           This gives two equations in usx[0] an usx[1].

               As'(As(usx[0]) - usx[1]) = bx[0] + As'(bsz0)

               -As(usx[0]) + usx[1] + S^-1 * usx[1] * S^-1
                   = bsx[1] - bsz0 - S^-1 * bsz1 * S^-1.


        2. Eliminate usx[1] using equation 2:

               usx[1] + S * usx[1] * S 
                   = S * ( As(usx[0]) + bsx[1] - bsz0 ) * S - bsz1

           i.e., with Gamma[i,j] = 1.0 + S[i,i] * S[j,j],
 
               usx[1] = ( S * As(usx[0]) * S ) ./ Gamma 
                        + ( S * ( bsx[1] - bsz0 ) * S - bsz1 ) ./ Gamma.

           This gives an equation in usx[0].

               As'( As(usx[0]) ./ Gamma ) 
                   = bx0 + As'(bsz0) + 
                     As'( (S * ( bsx[1] - bsz0 ) * S - bsz1) ./ Gamma )
                   = bx0 + As'( ( bsz0 - bsz1 + S * bsx[1] * S ) ./ Gamma ).

        """

        # Calculate U s.t.
        #
        #     U' * r0*r0' * U = I,   U' * r1*r1' * U = diag(s).

        # Cholesky factorization r0 * r0' = L * L'
        blas.syrk(W['r'][0], L)
        lapack.potrf(L)

        # SVD L^-1 * r1 = U * diag(s) * V'
        blas.copy(W['r'][1], U)
        blas.trsm(L, U)
        lapack.gesvd(U, s, jobu='O')

        # s := s**2
        s[:] = s**2

        # Uti := U
        blas.copy(U, Uti)

        # U := L^-T * U
        blas.trsm(L, U, transA='T')

        # Uti := L * Uti = U^-T
        blas.trmm(L, Uti)

        # Us := U * diag(s)^-1
        blas.copy(U, Us)
        for i in range(m):
            blas.tbsv(s, Us, n=m, k=0, ldA=1, incx=m, offsetx=i)

        # S is m x m with lower triangular entries s[i] * s[j]
        # sqrtG is m x m with lower triangular entries sqrt(1.0 + s[i]*s[j])
        # Upper triangular entries are undefined but nonzero.

        blas.scal(0.0, S)
        blas.syrk(s, S)
        Gamma = 1.0 + S
        sqrtG = sqrt(Gamma)

        # Asc[i] = (U' * Ai * * U ) ./  sqrtG,  for i = 1, ..., n
        #        = Asi ./ sqrt(Gamma)
        blas.copy(A, Asc)
        misc.scale(
            Asc,  # only 'r' part of the dictionary is used   
            {
                'dnl': matrix(0.0, (0, 1)),
                'dnli': matrix(0.0, (0, 1)),
                'd': matrix(0.0, (0, 1)),
                'di': matrix(0.0, (0, 1)),
                'v': [],
                'beta': [],
                'r': [U],
                'rti': [U]
            })
        for i in range(n):
            blas.tbsv(sqrtG, Asc, n=msq, k=0, ldA=1, offsetx=i * msq)

        # Convert columns of Asc to packed storage
        misc.pack2(Asc, {'l': 0, 'q': [], 's': [m]})

        # Cholesky factorization of Asc' * Asc.
        H = matrix(0.0, (n, n))
        blas.syrk(Asc, H, trans='T', k=mpckd)
        lapack.potrf(H)

        def solve(x, y, z):
            """

            1. Solve for usx[0]:

               Asc'(Asc(usx[0]))
                   = bx0 + Asc'( ( bsz0 - bsz1 + S * bsx[1] * S ) ./ sqrtG)
                   = bx0 + Asc'( ( bsz0 + S * ( bsx[1] - bssz1) S ) 
                     ./ sqrtG)

               where bsx[1] = U^-1 * bx[1] * U^-T, bsz0 = U' * bz0 * U, 
               bsz1 = U' * bz1 * U, bssz1 = S^-1 * bsz1 * S^-1 

            2. Solve for usx[1]:

               usx[1] + S * usx[1] * S 
                   = S * ( As(usx[0]) + bsx[1] - bsz0 ) * S - bsz1 

               usx[1] 
                   = ( S * (As(usx[0]) + bsx[1] - bsz0) * S - bsz1) ./ Gamma
                   = -bsz0 + (S * As(usx[0]) * S) ./ Gamma
                     + (bsz0 - bsz1 + S * bsx[1] * S ) . / Gamma
                   = -bsz0 + (S * As(usx[0]) * S) ./ Gamma
                     + (bsz0 + S * ( bsx[1] - bssz1 ) * S ) . / Gamma

               Unscale ux[1] = Uti * usx[1] * Uti'

            3. Compute usz0, usz1

               r0' * uz0 * r0 = r0^-1 * ( A(ux[0]) - ux[1] - bz0 ) * r0^-T
               r1' * uz1 * r1 = r1^-1 * ( -ux[1] - bz1 ) * r1^-T

            """

            # z0 := U' * z0 * U
            #     = bsz0
            __cngrnc(U, z, trans='T')

            # z1 := Us' * bz1 * Us
            #     = S^-1 * U' * bz1 * U * S^-1
            #     = S^-1 * bsz1 * S^-1
            __cngrnc(Us, z, trans='T', offsetx=msq)

            # x[1] := Uti' * x[1] * Uti
            #       = bsx[1]
            __cngrnc(Uti, x[1], trans='T')

            # x[1] := x[1] - z[msq:]
            #       = bsx[1] - S^-1 * bsz1 * S^-1
            blas.axpy(z, x[1], alpha=-1.0, offsetx=msq)

            # x1 = (S * x[1] * S + z[:msq] ) ./ sqrtG
            #    = (S * ( bsx[1] - S^-1 * bsz1 * S^-1) * S + bsz0 ) ./ sqrtG
            #    = (S * bsx[1] * S - bsz1 + bsz0 ) ./ sqrtG
            # in packed storage
            blas.copy(x[1], x1)
            blas.tbmv(S, x1, n=msq, k=0, ldA=1)
            blas.axpy(z, x1, n=msq)
            blas.tbsv(sqrtG, x1, n=msq, k=0, ldA=1)
            misc.pack2(x1, {'l': 0, 'q': [], 's': [m]})

            # x[0] := x[0] + Asc'*x1
            #       = bx0 + Asc'( ( bsz0 - bsz1 + S * bsx[1] * S ) ./ sqrtG)
            #       = bx0 + As'( ( bz0 - bz1 + S * bx[1] * S ) ./ Gamma )
            blas.gemv(Asc, x1, x[0], m=mpckd, trans='T', beta=1.0)

            # x[0] := H^-1 * x[0]
            #       = ux[0]
            lapack.potrs(H, x[0])

            # x1 = Asc(x[0]) .* sqrtG  (unpacked)
            #    = As(x[0])
            blas.gemv(Asc, x[0], tmp, m=mpckd)
            misc.unpack(tmp, x1, {'l': 0, 'q': [], 's': [m]})
            blas.tbmv(sqrtG, x1, n=msq, k=0, ldA=1)

            # usx[1] = (x1 + (x[1] - z[:msq])) ./ sqrtG**2
            #        = (As(ux[0]) + bsx[1] - bsz0 - S^-1 * bsz1 * S^-1)
            #           ./ Gamma

            # x[1] := x[1] - z[:msq]
            #       = bsx[1] - bsz0 - S^-1 * bsz1 * S^-1
            blas.axpy(z, x[1], -1.0, n=msq)

            # x[1] := x[1] + x1
            #       = As(ux) + bsx[1] - bsz0 - S^-1 * bsz1 * S^-1
            blas.axpy(x1, x[1])

            # x[1] := x[1] / Gammma
            #       = (As(ux) + bsx[1] - bsz0 + S^-1 * bsz1 * S^-1 ) / Gamma
            #       = S^-1 * usx[1] * S^-1
            blas.tbsv(Gamma, x[1], n=msq, k=0, ldA=1)

            # z[msq:] := r1' * U * (-z[msq:] - x[1]) * U * r1
            #         := -r1' * U * S^-1 * (bsz1 + ux[1]) * S^-1 *  U * r1
            #         := -r1' * uz1 * r1
            blas.axpy(x[1], z, n=msq, offsety=msq)
            blas.scal(-1.0, z, offset=msq)
            __cngrnc(U, z, offsetx=msq)
            __cngrnc(W['r'][1], z, trans='T', offsetx=msq)

            # x[1] :=  S * x[1] * S
            #       =  usx1
            blas.tbmv(S, x[1], n=msq, k=0, ldA=1)

            # z[:msq] = r0' * U' * ( x1 - x[1] - z[:msq] ) * U * r0
            #         = r0' * U' * ( As(ux) - usx1 - bsz0 ) * U * r0
            #         = r0' * U' *  usz0 * U * r0
            #         = r0' * uz0 * r0
            blas.axpy(x1, z, -1.0, n=msq)
            blas.scal(-1.0, z, n=msq)
            blas.axpy(x[1], z, -1.0, n=msq)
            __cngrnc(U, z)
            __cngrnc(W['r'][0], z, trans='T')

            # x[1] := Uti * x[1] * Uti'
            #       = ux[1]
            __cngrnc(Uti, x[1])

        return solve
コード例 #19
0
ファイル: cholesky.py プロジェクト: xinist/chompack
def cholesky(X):
    """
    Supernodal multifrontal Cholesky factorization:

    .. math::
         X = LL^T

    where :math:`L` is lower-triangular. On exit, the argument :math:`X`
    contains the Cholesky factor :math:`L`.

    :param X:    :py:class:`cspmatrix`
    """

    assert isinstance(X, cspmatrix) and X.is_factor is False, "X must be a cspmatrix"

    n = X.symb.n
    snpost = X.symb.snpost
    snptr = X.symb.snptr
    chptr = X.symb.chptr
    chidx = X.symb.chidx

    relptr = X.symb.relptr
    relidx = X.symb.relidx
    blkptr = X.symb.blkptr
    blkval = X.blkval

    stack = []

    for k in snpost:

        nn = snptr[k+1]-snptr[k]       # |Nk|
        na = relptr[k+1]-relptr[k]     # |Ak|
        nj = na + nn                   

        # build frontal matrix
        F = matrix(0.0, (nj, nj))
        lapack.lacpy(blkval, F, offsetA = blkptr[k], m = nj, n = nn, ldA = nj, uplo = 'L')

        # add update matrices from children to frontal matrix
        for i in range(chptr[k+1]-1,chptr[k]-1,-1):
            Ui = stack.pop()
            frontal_add_update(F, Ui, relidx, relptr, chidx[i])

        # factor L_{Nk,Nk}
        lapack.potrf(F, n = nn, ldA = nj)

        # if supernode k is not a root node, compute and push update matrix onto stack
        if na > 0:   
            # compute L_{Ak,Nk} := A_{Ak,Nk}*inv(L_{Nk,Nk}')
            blas.trsm(F, F, m = na, n = nn, ldA = nj, 
                      ldB = nj, offsetB = nn, transA = 'T', side = 'R')

            # compute Uk = Uk - L_{Ak,Nk}*inv(D_{Nk,Nk})*L_{Ak,Nk}'
            if nn == 1:
                blas.syr(F, F, n = na, offsetx = nn, \
                         offsetA = nn*nj+nn, ldA = nj, alpha = -1.0)
            else:
                blas.syrk(F, F, k = nn, n = na, offsetA = nn, ldA = nj,
                          offsetC = nn*nj+nn, ldC = nj, alpha = -1.0, beta = 1.0)

            # compute L_{Ak,Nk} := L_{Ak,Nk}*inv(L_{Nk,Nk})
            blas.trsm(F, F, m = na, n = nn,\
                      ldA = nj, ldB = nj, offsetB = nn, side = 'R')

            # add Uk to stack
            Uk = matrix(0.0,(na,na))
            lapack.lacpy(F, Uk, m = na, n = na, uplo = 'L', offsetA = nn*nj+nn, ldA = nj)
            stack.append(Uk)

        # copy the leading Nk columns of frontal matrix to blkval
        lapack.lacpy(F, blkval, uplo = "L", offsetB = blkptr[k], m = nj, n = nn, ldB = nj)        

    X.is_factor = True

    return
コード例 #20
0
ファイル: cvxoptL1.py プロジェクト: JacekPierzchlewski/RxCS
def Fkkt(W):
    """
        Custom solver:

          v := alpha * 2*A'*A * u + beta * v
    """

    global mmS
    mmS = matrix(0.0, (iR, iR))

    global vvV
    vvV = matrix(0.0, (iR, 1))

    # Factor
    #
    #     S = A*D^-1*A' + I
    #
    # where D = 2*D1*D2*(D1+D2)^-1, D1 = d[:n]**2, D2 = d[n:]**2.
    mmAsc = matrix(0.0, (iR, iC))

    d1, d2 = W["di"][:iC] ** 2, W["di"][iC:] ** 2

    # ds is square root of diagonal of D
    ds = sqrt(2.0) * div(mul(W["di"][:iC], W["di"][iC:]), sqrt(d1 + d2))
    d3 = div(d2 - d1, d1 + d2)

    # Asc = A*diag(d)^-1/2
    blas.copy(mmTh, mmAsc)
    for k in range(iR):
        blas.tbsv(ds, mmAsc, n=iC, k=0, ldA=1, incx=iR, offsetx=k)

    # S = I + A * D^-1 * A'
    blas.syrk(mmAsc, mmS)
    mmS[:: iR + 1] += 1.0
    lapack.potrf(mmS)

    def g(x, y, z):

        x[:iC] = 0.5 * (
            x[:iC] - mul(d3, x[iC:]) + mul(d1, z[:iC] + mul(d3, z[:iC])) - mul(d2, z[iC:] - mul(d3, z[iC:]))
        )
        x[:iC] = div(x[:iC], ds)

        # Solve
        #
        #     S * v = 0.5 * A * D^-1 * ( bx[:n]
        #             - (D2-D1)*(D1+D2)^-1 * bx[n:]
        #             + D1 * ( I + (D2-D1)*(D1+D2)^-1 ) * bz[:n]
        #             - D2 * ( I - (D2-D1)*(D1+D2)^-1 ) * bz[n:] )

        blas.gemv(mmAsc, x, vvV)
        lapack.potrs(mmS, vvV)

        # x[:n] = D^-1 * ( rhs - A'*v ).
        blas.gemv(mmAsc, vvV, x, alpha=-1.0, beta=1.0, trans="T")
        x[:iC] = div(x[:iC], ds)

        # x[n:] = (D1+D2)^-1 * ( bx[n:] - D1*bz[:n]  - D2*bz[n:] )
        #         - (D2-D1)*(D1+D2)^-1 * x[:n]
        x[iC:] = div(x[iC:] - mul(d1, z[:iC]) - mul(d2, z[iC:]), d1 + d2) - mul(d3, x[:iC])

        # z[:n] = D1^1/2 * (  x[:n] - x[n:] - bz[:n] )
        # z[n:] = D2^1/2 * ( -x[:n] - x[n:] - bz[n:] ).
        z[:iC] = mul(W["di"][:iC], x[:iC] - x[iC:] - z[:iC])
        z[iC:] = mul(W["di"][iC:], -x[:iC] - x[iC:] - z[iC:])

    return g
コード例 #21
0
ファイル: testqcl1.py プロジェクト: hrautila/go.opt
    def Fkkt(W): 

        # Returns a function f(x, y, z) that solves
        #
        #     [ 0   G'   ] [ x ] = [ bx ]
        #     [ G  -W'*W ] [ z ]   [ bz ].

        # First factor 
        #
        #     S = G' * W**-1 * W**-T * G
        #       = [0; -A]' * W3^-2 * [0; -A] + 4 * (W1**2 + W2**2)**-1 
        #
        # where
        #
        #     W1 = diag(d1) with d1 = W['d'][:n] = 1 ./ W['di'][:n]  
        #     W2 = diag(d2) with d2 = W['d'][n:] = 1 ./ W['di'][n:]  
        #     W3 = beta * (2*v*v' - J),  W3^-1 = 1/beta * (2*J*v*v'*J - J)  
        #        with beta = W['beta'][0], v = W['v'][0], J = [1, 0; 0, -I].
  
        # As = W3^-1 * [ 0 ; -A ] = 1/beta * ( 2*J*v * v' - I ) * [0; A]
 
        minor = 0
        if not helpers.sp_minor_empty():
            minor = helpers.sp_minor_top()

        beta, v = W['beta'][0], W['v'][0]
        As = 2 * v * (v[1:].T * A)
        As[1:,:] *= -1.0
        As[1:,:] -= A
        As /= beta
      
        # S = As'*As + 4 * (W1**2 + W2**2)**-1
        S = As.T * As 
        helpers.sp_add_var("S", S)

        d1, d2 = W['d'][:n], W['d'][n:]       

        d = 4.0 * (d1**2 + d2**2)**-1
        S[::n+1] += d
        lapack.potrf(S)
        helpers.sp_create("00-Fkkt", minor)

        def f(x, y, z):

            minor = 0
            if not helpers.sp_minor_empty():
                minor = helpers.sp_minor_top()
            else:
                global loopf
                loopf += 1
                minor = loopf
            helpers.sp_create("00-f", minor)

            # z := - W**-T * z 
            z[:n] = -div( z[:n], d1 )
            z[n:2*n] = -div( z[n:2*n], d2 )

            z[2*n:] -= 2.0*v*( v[0]*z[2*n] - blas.dot(v[1:], z[2*n+1:]) ) 
            z[2*n+1:] *= -1.0
            z[2*n:] /= beta

            # x := x - G' * W**-1 * z
            x[:n] -= div(z[:n], d1) - div(z[n:2*n], d2) + As.T * z[-(m+1):]
            x[n:] += div(z[:n], d1) + div(z[n:2*n], d2) 
            helpers.sp_create("15-f", minor)
  
            # Solve for x[:n]:
            #
            #    S*x[:n] = x[:n] - (W1**2 - W2**2)(W1**2 + W2**2)^-1 * x[n:]
            
            x[:n] -= mul( div(d1**2 - d2**2, d1**2 + d2**2), x[n:]) 
            helpers.sp_create("25-f", minor)

            lapack.potrs(S, x)
            helpers.sp_create("30-f", minor)
            
            # Solve for x[n:]:
            #
            #    (d1**-2 + d2**-2) * x[n:] = x[n:] + (d1**-2 - d2**-2)*x[:n]
             
            x[n:] += mul( d1**-2 - d2**-2, x[:n])
            helpers.sp_create("35-f", minor)

            x[n:] = div( x[n:], d1**-2 + d2**-2)
            helpers.sp_create("40-f", minor)

            # z := z + W^-T * G*x 
            z[:n] += div( x[:n] - x[n:2*n], d1) 
            helpers.sp_create("44-f", minor)

            z[n:2*n] += div( -x[:n] - x[n:2*n], d2) 
            helpers.sp_create("48-f", minor)

            z[2*n:] += As*x[:n]
            helpers.sp_create("50-f", minor)
  
        return f
コード例 #22
0
ファイル: ellipsoids.py プロジェクト: sfu-db/quicksel
    H1[3:, 3:] = 2 * B

    return f, Df, z[0] * H0 + sum(z[1:]) * H1


sol = solvers.cp(F)
A = matrix(sol['x'][[0, 1, 1, 2]], (2, 2))
b = sol['x'][3:]

if pylab_installed:
    pylab.figure(1, facecolor='w')
    pylab.plot(X[:, 0], X[:, 1], 'ko', X[:, 0], X[:, 1], '-k')

    # Ellipsoid in the form { x | || L' * (x-c) ||_2 <= 1 }
    L = +A
    lapack.potrf(L)
    c = +b
    lapack.potrs(L, c)

    # 1000 points on the unit circle
    nopts = 1000
    angles = matrix([a * 2.0 * pi / nopts for a in range(nopts)], (1, nopts))
    circle = matrix(0.0, (2, nopts))
    circle[0, :], circle[1, :] = cos(angles), sin(angles)

    # ellipse = L^-T * circle + c
    blas.trsm(L, circle, transA='T')
    ellipse = circle + c[:, nopts * [0]]
    ellipse2 = 0.5 * circle + c[:, nopts * [0]]

    pylab.plot(ellipse[0, :].T, ellipse[1, :].T, 'k-')
コード例 #23
0
    def F(W):
        """
        Create a solver for the linear equations

                                C * ux + G' * uzl - 2*A'(uzs21) = bx
                                                         -uzs11 = bX1
                                                         -uzs22 = bX2
                                            G * ux - Dl^2 * uzl = bzl
            [ -uX1   -A(ux)' ]          [ uzs11 uzs21' ]     
            [                ] - r*r' * [              ] * r*r' = bzs
            [ -A(ux) -uX2    ]          [ uzs21 uzs22  ]

        where Dl = diag(W['l']), r = W['r'][0].  

        On entry, x = (bx, bX1, bX2) and z = [ bzl; bzs[:] ].
        On exit, x = (ux, uX1, uX2) and z = [ Dl*uzl; (r'*uzs*r)[:] ].


        1. Compute matrices V1, V2 such that (with T = r*r')
        
               [ V1   0   ] [ T11  T21' ] [ V1'  0  ]   [ I  S' ]
               [          ] [           ] [         ] = [       ]
               [ 0    V2' ] [ T21  T22  ] [ 0    V2 ]   [ S  I  ]
        
           and S = [ diag(s); 0 ], s a positive q-vector.

        2. Factor the mapping X -> X + S * X' * S:

               X + S * X' * S = L( L'( X )). 

        3. Compute scaled mappings: a matrix As with as its columns the 
           coefficients of the scaled mapping 

               L^-1( V2' * A() * V1' ) 

           and the matrix Gs = Dl^-1 * G.

        4. Cholesky factorization of H = C + Gs'*Gs + 2*As'*As.

        """

        # 1. Compute V1, V2, s.

        r = W['r'][0]

        # LQ factorization R[:q, :] = L1 * Q1.
        lapack.lacpy(r, Q1, m=q)
        lapack.gelqf(Q1, tau1)
        lapack.lacpy(Q1, L1, n=q, uplo='L')
        lapack.orglq(Q1, tau1)

        # LQ factorization R[q:, :] = L2 * Q2.
        lapack.lacpy(r, Q2, m=p, offsetA=q)
        lapack.gelqf(Q2, tau2)
        lapack.lacpy(Q2, L2, n=p, uplo='L')
        lapack.orglq(Q2, tau2)

        # V2, V1, s are computed from an SVD: if
        #
        #     Q2 * Q1' = U * diag(s) * V',
        #
        # then V1 = V' * L1^-1 and V2 = L2^-T * U.

        # T21 = Q2 * Q1.T
        blas.gemm(Q2, Q1, T21, transB='T')

        # SVD T21 = U * diag(s) * V'.  Store U in V2 and V' in V1.
        lapack.gesvd(T21, s, jobu='A', jobvt='A', U=V2, Vt=V1)

        #        # Q2 := Q2 * Q1' without extracting Q1; store T21 in Q2
        #        this will requires lapack.ormlq or lapack.unmlq

        # V2 = L2^-T * U
        blas.trsm(L2, V2, transA='T')

        # V1 = V' * L1^-1
        blas.trsm(L1, V1, side='R')

        # 2. Factorization X + S * X' * S = L( L'( X )).
        #
        # The factor L is stored as a diagonal matrix D and a sparse lower
        # triangular matrix P, such that
        #
        #     L(X)[:] = D**-1 * (I + P) * X[:]
        #     L^-1(X)[:] = D * (I - P) * X[:].

        # SS is q x q with SS[i,j] = si*sj.
        blas.scal(0.0, SS)
        blas.syr(s, SS)

        # For a p x q matrix X, P*X[:] is Y[:] where
        #
        #     Yij = si * sj * Xji  if i < j
        #         = 0              otherwise.
        #
        P.V = SS[Itril2]

        # For a p x q matrix X, D*X[:] is Y[:] where
        #
        #     Yij = Xij / sqrt( 1 - si^2 * sj^2 )  if i < j
        #         = Xii / sqrt( 1 + si^2 )         if i = j
        #         = Xij                            otherwise.
        #
        DV[Idiag] = sqrt(1.0 + SS[::q + 1])
        DV[Itriu] = sqrt(1.0 - SS[Itril3]**2)
        D.V = DV**-1

        # 3. Scaled linear mappings

        # Ask :=  V2' * Ask * V1'
        blas.scal(0.0, As)
        base.axpy(A, As)
        for i in xrange(n):
            # tmp := V2' * As[i, :]
            blas.gemm(V2,
                      As,
                      tmp,
                      transA='T',
                      m=p,
                      n=q,
                      k=p,
                      ldB=p,
                      offsetB=i * p * q)
            # As[:,i] := tmp * V1'
            blas.gemm(tmp,
                      V1,
                      As,
                      transB='T',
                      m=p,
                      n=q,
                      k=q,
                      ldC=p,
                      offsetC=i * p * q)

        # As := D * (I - P) * As
        #     = L^-1 * As.
        blas.copy(As, As2)
        base.gemm(P, As, As2, alpha=-1.0, beta=1.0)
        base.gemm(D, As2, As)

        # Gs := Dl^-1 * G
        blas.scal(0.0, Gs)
        base.axpy(G, Gs)
        for k in xrange(n):
            blas.tbmv(W['di'], Gs, n=m, k=0, ldA=1, offsetx=k * m)

        # 4. Cholesky factorization of H = C + Gs' * Gs + 2 * As' * As.

        blas.syrk(As, H, trans='T', alpha=2.0)
        blas.syrk(Gs, H, trans='T', beta=1.0)
        base.axpy(C, H)
        lapack.potrf(H)

        def f(x, y, z):
            """

            Solve 

                              C * ux + G' * uzl - 2*A'(uzs21) = bx
                                                       -uzs11 = bX1
                                                       -uzs22 = bX2
                                           G * ux - D^2 * uzl = bzl
                [ -uX1   -A(ux)' ]       [ uzs11 uzs21' ]     
                [                ] - T * [              ] * T = bzs.
                [ -A(ux) -uX2    ]       [ uzs21 uzs22  ]

            On entry, x = (bx, bX1, bX2) and z = [ bzl; bzs[:] ].
            On exit, x = (ux, uX1, uX2) and z = [ D*uzl; (r'*uzs*r)[:] ].

            Define X = uzs21, Z = T * uzs * T:   
 
                      C * ux + G' * uzl - 2*A'(X) = bx
                                [ 0  X' ]               [ bX1 0   ]
                            T * [       ] * T - Z = T * [         ] * T
                                [ X  0  ]               [ 0   bX2 ]
                               G * ux - D^2 * uzl = bzl
                [ -uX1   -A(ux)' ]   [ Z11 Z21' ]     
                [                ] - [          ] = bzs
                [ -A(ux) -uX2    ]   [ Z21 Z22  ]

            Return x = (ux, uX1, uX2), z = [ D*uzl; (rti'*Z*rti)[:] ].

            We use the congruence transformation 

                [ V1   0   ] [ T11  T21' ] [ V1'  0  ]   [ I  S' ]
                [          ] [           ] [         ] = [       ]
                [ 0    V2' ] [ T21  T22  ] [ 0    V2 ]   [ S  I  ]

            and the factorization 

                X + S * X' * S = L( L'(X) ) 

            to write this as

                                  C * ux + G' * uzl - 2*A'(X) = bx
                L'(V2^-1 * X * V1^-1) - L^-1(V2' * Z21 * V1') = bX
                                           G * ux - D^2 * uzl = bzl
                            [ -uX1   -A(ux)' ]   [ Z11 Z21' ]     
                            [                ] - [          ] = bzs,
                            [ -A(ux) -uX2    ]   [ Z21 Z22  ]

            or

                C * ux + Gs' * uuzl - 2*As'(XX) = bx
                                      XX - ZZ21 = bX
                                 Gs * ux - uuzl = D^-1 * bzl
                                 -As(ux) - ZZ21 = bbzs_21
                                     -uX1 - Z11 = bzs_11
                                     -uX2 - Z22 = bzs_22

            if we introduce scaled variables

                uuzl = D * uzl
                  XX = L'(V2^-1 * X * V1^-1) 
                     = L'(V2^-1 * uzs21 * V1^-1)
                ZZ21 = L^-1(V2' * Z21 * V1') 

            and define

                bbzs_21 = L^-1(V2' * bzs_21 * V1')
                                           [ bX1  0   ]
                     bX = L^-1( V2' * (T * [          ] * T)_21 * V1').
                                           [ 0    bX2 ]           
 
            Eliminating Z21 gives 

                C * ux + Gs' * uuzl - 2*As'(XX) = bx
                                 Gs * ux - uuzl = D^-1 * bzl
                                   -As(ux) - XX = bbzs_21 - bX
                                     -uX1 - Z11 = bzs_11
                                     -uX2 - Z22 = bzs_22 

            and eliminating uuzl and XX gives

                        H * ux = bx + Gs' * D^-1 * bzl + 2*As'(bX - bbzs_21)
                Gs * ux - uuzl = D^-1 * bzl
                  -As(ux) - XX = bbzs_21 - bX
                    -uX1 - Z11 = bzs_11
                    -uX2 - Z22 = bzs_22.


            In summary, we can use the following algorithm: 

            1. bXX := bX - bbzs21
                                        [ bX1 0   ]
                    = L^-1( V2' * ((T * [         ] * T)_21 - bzs_21) * V1')
                                        [ 0   bX2 ]

            2. Solve H * ux = bx + Gs' * D^-1 * bzl + 2*As'(bXX).

            3. From ux, compute 

                   uuzl = Gs*ux - D^-1 * bzl and 
                      X = V2 * L^-T(-As(ux) + bXX) * V1.

            4. Return ux, uuzl, 

                   rti' * Z * rti = r' * [ -bX1, X'; X, -bX2 ] * r
 
               and uX1 = -Z11 - bzs_11,  uX2 = -Z22 - bzs_22.

            """

            # Save bzs_11, bzs_22, bzs_21.
            lapack.lacpy(z, bz11, uplo='L', m=q, n=q, ldA=p + q, offsetA=m)
            lapack.lacpy(z, bz21, m=p, n=q, ldA=p + q, offsetA=m + q)
            lapack.lacpy(z,
                         bz22,
                         uplo='L',
                         m=p,
                         n=p,
                         ldA=p + q,
                         offsetA=m + (p + q + 1) * q)

            # zl := D^-1 * zl
            #     = D^-1 * bzl
            blas.tbmv(W['di'], z, n=m, k=0, ldA=1)

            # zs := r' * [ bX1, 0; 0, bX2 ] * r.

            # zs := [ bX1, 0; 0, bX2 ]
            blas.scal(0.0, z, offset=m)
            lapack.lacpy(x[1], z, uplo='L', m=q, n=q, ldB=p + q, offsetB=m)
            lapack.lacpy(x[2],
                         z,
                         uplo='L',
                         m=p,
                         n=p,
                         ldB=p + q,
                         offsetB=m + (p + q + 1) * q)

            # scale diagonal of zs by 1/2
            blas.scal(0.5, z, inc=p + q + 1, offset=m)

            # a := tril(zs)*r
            blas.copy(r, a)
            blas.trmm(z,
                      a,
                      side='L',
                      m=p + q,
                      n=p + q,
                      ldA=p + q,
                      ldB=p + q,
                      offsetA=m)

            # zs := a'*r + r'*a
            blas.syr2k(r,
                       a,
                       z,
                       trans='T',
                       n=p + q,
                       k=p + q,
                       ldB=p + q,
                       ldC=p + q,
                       offsetC=m)

            # bz21 := L^-1( V2' * ((r * zs * r')_21 - bz21) * V1')
            #
            #                           [ bX1 0   ]
            #       = L^-1( V2' * ((T * [         ] * T)_21 - bz21) * V1').
            #                           [ 0   bX2 ]

            # a = [ r21 r22 ] * z
            #   = [ r21 r22 ] * r' * [ bX1, 0; 0, bX2 ] * r
            #   = [ T21  T22 ] * [ bX1, 0; 0, bX2 ] * r
            blas.symm(z,
                      r,
                      a,
                      side='R',
                      m=p,
                      n=p + q,
                      ldA=p + q,
                      ldC=p + q,
                      offsetB=q)

            # bz21 := -bz21 + a * [ r11, r12 ]'
            #       = -bz21 + (T * [ bX1, 0; 0, bX2 ] * T)_21
            blas.gemm(a,
                      r,
                      bz21,
                      transB='T',
                      m=p,
                      n=q,
                      k=p + q,
                      beta=-1.0,
                      ldA=p + q,
                      ldC=p)

            # bz21 := V2' * bz21 * V1'
            #       = V2' * (-bz21 + (T*[bX1, 0; 0, bX2]*T)_21) * V1'
            blas.gemm(V2, bz21, tmp, transA='T', m=p, n=q, k=p, ldB=p)
            blas.gemm(tmp, V1, bz21, transB='T', m=p, n=q, k=q, ldC=p)

            # bz21[:] := D * (I-P) * bz21[:]
            #       = L^-1 * bz21[:]
            #       = bXX[:]
            blas.copy(bz21, tmp)
            base.gemv(P, bz21, tmp, alpha=-1.0, beta=1.0)
            base.gemv(D, tmp, bz21)

            # Solve H * ux = bx + Gs' * D^-1 * bzl + 2*As'(bXX).

            # x[0] := x[0] + Gs'*zl + 2*As'(bz21)
            #       = bx + G' * D^-1 * bzl + 2 * As'(bXX)
            blas.gemv(Gs, z, x[0], trans='T', alpha=1.0, beta=1.0)
            blas.gemv(As, bz21, x[0], trans='T', alpha=2.0, beta=1.0)

            # x[0] := H \ x[0]
            #      = ux
            lapack.potrs(H, x[0])

            # uuzl = Gs*ux - D^-1 * bzl
            blas.gemv(Gs, x[0], z, alpha=1.0, beta=-1.0)

            # bz21 := V2 * L^-T(-As(ux) + bz21) * V1
            #       = X
            blas.gemv(As, x[0], bz21, alpha=-1.0, beta=1.0)
            blas.tbsv(DV, bz21, n=p * q, k=0, ldA=1)
            blas.copy(bz21, tmp)
            base.gemv(P, tmp, bz21, alpha=-1.0, beta=1.0, trans='T')
            blas.gemm(V2, bz21, tmp)
            blas.gemm(tmp, V1, bz21)

            # zs := -zs + r' * [ 0, X'; X, 0 ] * r
            #     = r' * [ -bX1, X'; X, -bX2 ] * r.

            # a := bz21 * [ r11, r12 ]
            #   =  X * [ r11, r12 ]
            blas.gemm(bz21, r, a, m=p, n=p + q, k=q, ldA=p, ldC=p + q)

            # z := -z + [ r21, r22 ]' * a + a' * [ r21, r22 ]
            #    = rti' * uzs * rti
            blas.syr2k(r,
                       a,
                       z,
                       trans='T',
                       beta=-1.0,
                       n=p + q,
                       k=p,
                       offsetA=q,
                       offsetC=m,
                       ldB=p + q,
                       ldC=p + q)

            # uX1 = -Z11 - bzs_11
            #     = -(r*zs*r')_11 - bzs_11
            # uX2 = -Z22 - bzs_22
            #     = -(r*zs*r')_22 - bzs_22

            blas.copy(bz11, x[1])
            blas.copy(bz22, x[2])

            # scale diagonal of zs by 1/2
            blas.scal(0.5, z, inc=p + q + 1, offset=m)

            # a := r*tril(zs)
            blas.copy(r, a)
            blas.trmm(z,
                      a,
                      side='R',
                      m=p + q,
                      n=p + q,
                      ldA=p + q,
                      ldB=p + q,
                      offsetA=m)

            # x[1] := -x[1] - a[:q,:] * r[:q, :]' - r[:q,:] * a[:q,:]'
            #       = -bzs_11 - (r*zs*r')_11
            blas.syr2k(a, r, x[1], n=q, alpha=-1.0, beta=-1.0)

            # x[2] := -x[2] - a[q:,:] * r[q:, :]' - r[q:,:] * a[q:,:]'
            #       = -bzs_22 - (r*zs*r')_22
            blas.syr2k(a,
                       r,
                       x[2],
                       n=p,
                       alpha=-1.0,
                       beta=-1.0,
                       offsetA=q,
                       offsetB=q)

            # scale diagonal of zs by 1/2
            blas.scal(2.0, z, inc=p + q + 1, offset=m)

        return f
コード例 #24
0
if pylab_installed:
    pylab.figure(1, facecolor='w', figsize=(6,6)) 
    pylab.plot(V[0,:], V[1,:],'ow', mec='k')
    pylab.plot([0], [0], 'k+')
    I = [ k for k in range(n) if xd[k] > 1e-5 ]
    pylab.plot(V[0,I], V[1,I],'or')

# Enclosing ellipse is  {x | x' * (V*diag(xe)*V')^-1 * x = sqrt(2)}
nopts = 1000
angles = matrix( [ a*2.0*pi/nopts for a in range(nopts) ], (1,nopts) )
circle = matrix(0.0, (2,nopts))
circle[0,:], circle[1,:] = cos(angles), sin(angles)

W = V * spdiag(xd) * V.T
lapack.potrf(W)
ellipse = sqrt(2.0) * circle
blas.trmm(W, ellipse)
if pylab_installed:
    pylab.plot(ellipse[0,:].T, ellipse[1,:].T, 'k--')
    pylab.axis([-5, 5, -5, 5])
    pylab.title('D-optimal design (fig. 7.9)')
    pylab.axis('off')


# E-design.
#
# maximize    w
# subject to  w*I <= V*diag(x)*V' 
#             x >= 0
#             sum(x) = 1
コード例 #25
0
        def kkt(W):
            """
            KKT solver for

                Q * ux  + uy * 1_m' + mat(uz) = bx
                                    ux * 1_m  = by
                         ux - d.^2 .* mat(uz) = mat(bz).

            ux and bx are N x m matrices.
            uy and by are N-vectors.
            uz and bz are N*m-vectors.  mat(uz) is the N x m matrix that 
                satisfies mat(uz)[:] = uz.
            d = mat(W['d']) a positive N x m matrix.

            If we eliminate uz from the last equation using 

                mat(uz) = (ux - mat(bz)) ./ d.^2
        
            we get two equations in ux, uy:

                Q * ux + ux ./ d.^2 + uy * 1_m' = bx + mat(bz) ./ d.^2
                                       ux * 1_m = by.

            From the 1st equation 

                uxk = -(Q + Dk)^-1 * uy + (Q + Dk)^-1 * (bxk + Dk * bzk)

            where uxk is column k of ux, Dk = diag(d[:,k].^-2), and bzk is 
            column k of mat(bz).  Substituting this in the second equation
            gives an equation for uy.

            1. Solve for uy

                   sum_k (Q + Dk)^-1 * uy = 
                       sum_k (Q + Dk)^-1 * (bxk + Dk * bzk) - by.
 
            2. Solve for ux (column by column)

                   Q * ux + ux ./ d.^2 = bx + mat(bz) ./ d.^2 - uy * 1_m'.

            3. Solve for uz

                   mat(uz) = ( ux - mat(bz) ) ./ d.^2.
        
            Return ux, uy, d .* uz.
            """

            # D = d.^-2
            D = matrix(W['di']**2, (N, m))

            blas.scal(0.0, S)
            for k in range(m):

                # Hk := Q + Dk
                blas.copy(Q, H[k])
                H[k][::N + 1] += D[:, k]

                # Hk := Hk^-1
                #     = (Q + Dk)^-1
                lapack.potrf(H[k])
                lapack.potri(H[k])

                # S := S + Hk
                #    = S + (Q + Dk)^-1
                blas.axpy(H[k], S)

            # Factor S = sum_k (Q + Dk)^-1
            lapack.potrf(S)

            def f(x, y, z):

                # z := mat(z)
                #    = mat(bz)
                z.size = N, m

                # x := x + D .* z
                #    = bx + mat(bz) ./ d.^2
                x += mul(D, z)

                # y := y - sum_k (Q + Dk)^-1 * X[:,k]
                #    = by - sum_k (Q + Dk)^-1 * (bxk + Dk * bzk)
                for k in range(m):
                    blas.symv(H[k], x[:, k], y, alpha=-1.0, beta=1.0)

                # y := H^-1 * y
                #    = -uy
                lapack.potrs(S, y)

                # x[:,k] := H[k] * (x[:,k] + y)
                #         = (Q + Dk)^-1 * (bxk + bzk ./ d.^2 + y)
                #         = ux[:,k]
                w = matrix(0.0, (N, 1))
                for k in range(m):

                    # x[:,k] := x[:,k] + y
                    blas.axpy(y, x, offsety=N * k, n=N)

                    # w := H[k] * x[:,k]
                    #    = (Q + Dk)^-1 * (bxk + bzk ./ d.^2 + y)
                    blas.symv(H[k], x, w, offsetx=N * k)

                    # x[:,k] := w
                    #         = ux[:,k]
                    blas.copy(w, x, offsety=N * k)

                # y := -y
                #    = uy
                blas.scal(-1.0, y)

                # z := (x - z) ./ d
                blas.axpy(x, z, -1.0)
                blas.tbsv(W['d'], z, n=m * N, k=0, ldA=1)
                blas.scal(-1.0, z)
                z.size = N * m, 1

            return f
コード例 #26
0
        def kkt(W):
            """
            KKT solver for

                X*X' * ux  + uy * 1_m' + mat(uz) = bx
                                       ux * 1_m  = by
                            ux - d.^2 .* mat(uz) = mat(bz).

            ux and bx are N x m matrices.
            uy and by are N-vectors.
            uz and bz are N*m-vectors.  mat(uz) is the N x m matrix that 
                satisfies mat(uz)[:] = uz.
            d = mat(W['d']) a positive N x m matrix.

            If we eliminate uz from the last equation using 

                mat(uz) = (ux - mat(bz)) ./ d.^2
        
            we get two equations in ux, uy:

                X*X' * ux + ux ./ d.^2 + uy * 1_m' = bx + mat(bz) ./ d.^2
                                          ux * 1_m = by.

            From the 1st equation,

                uxk = (X*X' + Dk^-2)^-1 * (-uy + bxk + Dk^-2 * bzk)
                    = Dk * (I + Xk*Xk')^-1 * Dk * (-uy + bxk + Dk^-2 * bzk)

            for k = 1, ..., m, where Dk = diag(d[:,k]), Xk = Dk * X, 
            uxk is column k of ux, and bzk is column k of mat(bz).  

            We use the matrix inversion lemma

                ( I + Xk * Xk' )^-1 = I - Xk * (I + Xk' * Xk)^-1 * Xk'
                                    = I - Xk * Hk^-1 * Xk'
                                    = I - Xk * Lk^-T * Lk^-1 *  Xk'

            where Hk = I + Xk' * Xk = Lk * Lk' to write this as

                uxk = Dk * (I - Xk * Hk^-1 * Xk') * Dk *
                      (-uy + bxk + Dk^-2 * bzk)
                    = (Dk^2 - Dk^2 * X * Hk^-1 * X' * Dk^2) *
                      (-uy + bxk + Dk^-2 * bzk).

            Substituting this in the second equation gives an equation 
            for uy:

                sum_k (Dk^2 - Dk^2 * X * Hk^-1 * X' * Dk^2 ) * uy 
                    = -by + sum_k (Dk^2 - Dk^2 * X * Hk^-1 * X' * Dk^2) *
                      ( bxk + Dk^-2 * bzk ),

            i.e., with D = (sum_k Dk^2)^1/2,  Yk = D^-1 * Dk^2 * X * Lk^-T,

                D * ( I - sum_k Yk * Yk' ) * D * uy  
                    = -by + sum_k (Dk^2 - Dk^2 * X * Hk^-1 * X' * Dk^2) * 
                      ( bxk + Dk^-2 *bzk ).

            Another application of the matrix inversion lemma gives

                uy = D^-1 * (I + Y * S^-1 * Y') * D^-1 * 
                     ( -by + sum_k ( Dk^2 - Dk^2 * X * Hk^-1 * X' * Dk^2 ) *
                     ( bxk + Dk^-2 *bzk ) )

            with S = I - Y' * Y,  Y = [ Y1 ... Ym ].  


            Summary:

            1. Compute 

                   uy = D^-1 * (I + Y * S^-1 * Y') * D^-1 * 
                        ( -by + sum_k (Dk^2 - Dk^2 * X * Hk^-1 * X' * Dk^2)
                        * ( bxk + Dk^-2 *bzk ) )
 
            2. For k = 1, ..., m:

                   uxk = (Dk^2 - Dk^2 * X * Hk^-1 * X' * Dk^2) * 
                         (-uy + bxk + Dk^-2 * bzk)

            3. Solve for uz

                   d .* uz = ( ux - mat(bz) ) ./ d.
        
            Return ux, uy, d .* uz.

            """
            ###
            utime0, stime0 = cputime()
            ###

            d = matrix(W['d'], (N, m))
            dsq = matrix(W['d']**2, (N, m))

            # Factor the matrices
            #
            #     H[k] = I + Xk' * Xk
            #          = I + X' * Dk^2 * X.
            #
            # Dk = diag(d[:,k]).

            for k in range(m):

                # H[k] = I
                blas.scal(0.0, H[k])
                H[k][::n + 1] = 1.0

                # Xs = Dk * X
                #    = diag(d[:,k]]) * X
                blas.copy(X, Xs)
                for j in range(n):
                    blas.tbmv(d,
                              Xs,
                              n=N,
                              k=0,
                              ldA=1,
                              offsetA=k * N,
                              offsetx=j * N)

                # H[k] := H[k] + Xs' * Xs
                #       = I + Xk' * Xk
                blas.syrk(Xs, H[k], trans='T', beta=1.0)

                # Factorization H[k] = Lk * Lk'
                lapack.potrf(H[k])

###
            utime, stime = cputime()
            print("Factor Hk's: utime = %.2f, stime = %.2f" \
                %(utime-utime0, stime-stime0))
            utime0, stime0 = cputime()
            ###

            # diag(D) = ( sum_k d[:,k]**2 ) ** 1/2
            #         = ( sum_k Dk^2) ** 1/2.

            blas.gemv(dsq, ones, D)
            D[:] = sqrt(D)

            ###
            #            utime, stime = cputime()
            #            print("Compute D:  utime = %.2f, stime = %.2f" \
            #                %(utime-utime0, stime-stime0))
            utime0, stime0 = cputime()
            ###

            # S = I - Y'* Y is an m x m block matrix.
            # The i,j block of Y' * Y is
            #
            #     Yi' * Yj = Li^-1 * X' * Di^2 * D^-1 * Dj^2 * X * Lj^-T.
            #
            # We compute only the lower triangular blocks in Y'*Y.

            blas.scal(0.0, S)
            for i in range(m):
                for j in range(i + 1):

                    # Xs = Di * Dj * D^-1 * X
                    blas.copy(X, Xs)
                    blas.copy(d, wN, n=N, offsetx=i * N)
                    blas.tbmv(d, wN, n=N, k=0, ldA=1, offsetA=j * N)
                    blas.tbsv(D, wN, n=N, k=0, ldA=1)
                    for k in range(n):
                        blas.tbmv(wN, Xs, n=N, k=0, ldA=1, offsetx=k * N)

                    # block i, j of S is Xs' * Xs (as nonsymmetric matrix so we
                    # get the correct multiple after scaling with Li, Lj)
                    blas.gemm(Xs,
                              Xs,
                              S,
                              transA='T',
                              ldC=m * n,
                              offsetC=(j * n) * m * n + i * n)

###
            utime, stime = cputime()
            print("Form S:      utime = %.2f, stime = %.2f" \
                %(utime-utime0, stime-stime0))
            utime0, stime0 = cputime()
            ###

            for i in range(m):

                # multiply block row i of S on the left with Li^-1
                blas.trsm(H[i],
                          S,
                          m=n,
                          n=(i + 1) * n,
                          ldB=m * n,
                          offsetB=i * n)

                # multiply block column i of S on the right with Li^-T
                blas.trsm(H[i],
                          S,
                          side='R',
                          transA='T',
                          m=(m - i) * n,
                          n=n,
                          ldB=m * n,
                          offsetB=i * n * (m * n + 1))

            blas.scal(-1.0, S)
            S[::(m * n + 1)] += 1.0

            ###
            utime, stime = cputime()
            print("Form S (2):  utime = %.2f, stime = %.2f" \
                %(utime-utime0, stime-stime0))
            utime0, stime0 = cputime()
            ###

            # S = L*L'
            lapack.potrf(S)

            ###
            utime, stime = cputime()
            print("Factor S:    utime = %.2f, stime = %.2f" \
                %(utime-utime0, stime-stime0))
            utime0, stime0 = cputime()

            ###

            def f(x, y, z):
                """
                1. Compute 

                   uy = D^-1 * (I + Y * S^-1 * Y') * D^-1 * 
                        ( -by + sum_k (Dk^2 - Dk^2 * X * Hk^-1 * X' * Dk^2)
                        * ( bxk + Dk^-2 *bzk ) )
 
                2. For k = 1, ..., m:

                   uxk = (Dk^2 - Dk^2 * X * Hk^-1 * X' * Dk^2) * 
                         (-uy + bxk + Dk^-2 * bzk)

                3. Solve for uz

                   d .* uz = ( ux - mat(bz) ) ./ d.
        
                Return ux, uy, d .* uz.
                """

                ###
                utime0, stime0 = cputime()
                ###

                # xk := Dk^2 * xk + zk
                #     = Dk^2 * bxk + bzk
                blas.tbmv(dsq, x, n=N * m, k=0, ldA=1)
                blas.axpy(z, x)

                # y := -y + sum_k ( I - Dk^2 * X * Hk^-1 * X' ) * xk
                #    = -y + x*ones - sum_k Dk^2 * X * Hk^-1 * X' * xk

                # y := -y + x*ones
                blas.gemv(x, ones, y, alpha=1.0, beta=-1.0)

                # wnm = X' * x  (wnm interpreted as an n x m matrix)
                blas.gemm(X, x, wnm, m=n, k=N, n=m, transA='T', ldB=N, ldC=n)

                # wnm[:,k] = Hk \ wnm[:,k] (for wnm as an n x m matrix)
                for k in range(m):
                    lapack.potrs(H[k], wnm, offsetB=k * n)

                for k in range(m):

                    # wN = X * wnm[:,k]
                    blas.gemv(X, wnm, wN, offsetx=n * k)

                    # wN = Dk^2 * wN
                    blas.tbmv(dsq[:, k], wN, n=N, k=0, ldA=1)

                    # y := y - wN
                    blas.axpy(wN, y, -1.0)

                # y = D^-1 * (I + Y * S^-1 * Y') * D^-1 * y
                #
                # Y = [Y1 ... Ym ], Yk = D^-1 * Dk^2 * X * Lk^-T.

                # y := D^-1 * y
                blas.tbsv(D, y, n=N, k=0, ldA=1)

                # wnm =  Y' * y  (interpreted as an Nm vector)
                #     = [ L1^-1 * X' * D1^2 * D^-1 * y;
                #         L2^-1 * X' * D2^2 * D^-1 * y;
                #         ...
                #         Lm^-1 * X' * Dm^2 * D^-1 * y ]

                for k in range(m):

                    # wN = D^-1 * Dk^2 * y
                    blas.copy(y, wN)
                    blas.tbmv(dsq, wN, n=N, k=0, ldA=1, offsetA=k * N)
                    blas.tbsv(D, wN, n=N, k=0, ldA=1)

                    # wnm[:,k] = X' * wN
                    blas.gemv(X, wN, wnm, trans='T', offsety=k * n)

                    # wnm[:,k] = Lk^-1 * wnm[:,k]
                    blas.trsv(H[k], wnm, offsetx=k * n)

                # wnm := S^-1 * wnm  (an mn-vector)
                lapack.potrs(S, wnm)

                # y := y + Y * wnm
                #    = y + D^-1 * [ D1^2 * X * L1^-T ... D2^k * X * Lk^-T]
                #      * wnm

                for k in range(m):

                    # wnm[:,k] = Lk^-T * wnm[:,k]
                    blas.trsv(H[k], wnm, trans='T', offsetx=k * n)

                    # wN = X * wnm[:,k]
                    blas.gemv(X, wnm, wN, offsetx=k * n)

                    # wN = D^-1 * Dk^2 * wN
                    blas.tbmv(dsq, wN, n=N, k=0, ldA=1, offsetA=k * N)
                    blas.tbsv(D, wN, n=N, k=0, ldA=1)

                    # y += wN
                    blas.axpy(wN, y)

                # y := D^-1 *  y
                blas.tbsv(D, y, n=N, k=0, ldA=1)

                # For k = 1, ..., m:
                #
                # xk = (I - Dk^2 * X * Hk^-1 * X') * (-Dk^2 * y + xk)

                # x = x - [ D1^2 * y ... Dm^2 * y] (as an N x m matrix)
                for k in range(m):
                    blas.copy(y, wN)
                    blas.tbmv(dsq, wN, n=N, k=0, ldA=1, offsetA=k * N)
                    blas.axpy(wN, x, -1.0, offsety=k * N)

                # wnm  = X' * x (as an n x m matrix)
                blas.gemm(X, x, wnm, transA='T', m=n, n=m, k=N, ldB=N, ldC=n)

                # wnm[:,k] = Hk^-1 * wnm[:,k]
                for k in range(m):
                    lapack.potrs(H[k], wnm, offsetB=n * k)

                for k in range(m):

                    # wN = X * wnm[:,k]
                    blas.gemv(X, wnm, wN, offsetx=k * n)

                    # wN = Dk^2 * wN
                    blas.tbmv(dsq, wN, n=N, k=0, ldA=1, offsetA=k * N)

                    # x[:,k] := x[:,k] - wN
                    blas.axpy(wN, x, -1.0, n=N, offsety=k * N)

                # z := ( x - z ) ./ d
                blas.axpy(x, z, -1.0)
                blas.scal(-1.0, z)
                blas.tbsv(d, z, n=N * m, k=0, ldA=1)

                ###
                utime, stime = cputime()
                print("Solve:       utime = %.2f, stime = %.2f" \
                    %(utime-utime0, stime-stime0))


###

            return f
コード例 #27
0
ファイル: ubsdp.py プロジェクト: a85531506/research_project
    def F(W):
        """
        Generate a solver for

                                             A'(uz0) = bx[0]
                                          -uz0 - uz1 = bx[1] 
            A(ux[0]) - ux[1] - r0*r0' * uz0 * r0*r0' = bz0 
                     - ux[1] - r1*r1' * uz1 * r1*r1' = bz1.

        uz0, uz1, bz0, bz1 are symmetric m x m-matrices.
        ux[0], bx[0] are n-vectors.
        ux[1], bx[1] are symmetric m x m-matrices.

        We first calculate a congruence that diagonalizes r0*r0' and r1*r1':
 
            U' * r0 * r0' * U = I,  U' * r1 * r1' * U = S.

        We then make a change of variables

            usx[0] = ux[0],  
            usx[1] = U' * ux[1] * U  
              usz0 = U^-1 * uz0 * U^-T  
              usz1 = U^-1 * uz1 * U^-T 

        and define 

              As() = U' * A() * U'  
            bsx[1] = U^-1 * bx[1] * U^-T
              bsz0 = U' * bz0 * U  
              bsz1 = U' * bz1 * U.  

        This gives

                             As'(usz0) = bx[0]
                          -usz0 - usz1 = bsx[1] 
            As(usx[0]) - usx[1] - usz0 = bsz0 
                -usx[1] - S * usz1 * S = bsz1.


        1. Eliminate usz0, usz1 using equations 3 and 4,

               usz0 = As(usx[0]) - usx[1] - bsz0
               usz1 = -S^-1 * (usx[1] + bsz1) * S^-1.

           This gives two equations in usx[0] an usx[1].

               As'(As(usx[0]) - usx[1]) = bx[0] + As'(bsz0)

               -As(usx[0]) + usx[1] + S^-1 * usx[1] * S^-1
                   = bsx[1] - bsz0 - S^-1 * bsz1 * S^-1.


        2. Eliminate usx[1] using equation 2:

               usx[1] + S * usx[1] * S 
                   = S * ( As(usx[0]) + bsx[1] - bsz0 ) * S - bsz1

           i.e., with Gamma[i,j] = 1.0 + S[i,i] * S[j,j],
 
               usx[1] = ( S * As(usx[0]) * S ) ./ Gamma 
                        + ( S * ( bsx[1] - bsz0 ) * S - bsz1 ) ./ Gamma.

           This gives an equation in usx[0].

               As'( As(usx[0]) ./ Gamma ) 
                   = bx0 + As'(bsz0) + 
                     As'( (S * ( bsx[1] - bsz0 ) * S - bsz1) ./ Gamma )
                   = bx0 + As'( ( bsz0 - bsz1 + S * bsx[1] * S ) ./ Gamma ).

        """

        # Calculate U s.t. 
        # 
        #     U' * r0*r0' * U = I,   U' * r1*r1' * U = diag(s).
 
        # Cholesky factorization r0 * r0' = L * L'
        blas.syrk(W['r'][0], L)
        lapack.potrf(L)

        # SVD L^-1 * r1 = U * diag(s) * V'  
        blas.copy(W['r'][1], U)
        blas.trsm(L, U) 
        lapack.gesvd(U, s, jobu = 'O')

        # s := s**2
        s[:] = s**2

        # Uti := U
        blas.copy(U, Uti)

        # U := L^-T * U
        blas.trsm(L, U, transA = 'T')

        # Uti := L * Uti = U^-T 
        blas.trmm(L, Uti)

        # Us := U * diag(s)^-1
        blas.copy(U, Us)
        for i in range(m):
            blas.tbsv(s, Us, n = m, k = 0, ldA = 1, incx = m, offsetx = i)

        # S is m x m with lower triangular entries s[i] * s[j] 
        # sqrtG is m x m with lower triangular entries sqrt(1.0 + s[i]*s[j])
        # Upper triangular entries are undefined but nonzero.

        blas.scal(0.0, S)
        blas.syrk(s, S)
        Gamma = 1.0 + S
        sqrtG = sqrt(Gamma)


        # Asc[i] = (U' * Ai * * U ) ./  sqrtG,  for i = 1, ..., n
        #        = Asi ./ sqrt(Gamma)
        blas.copy(A, Asc)
        misc.scale(Asc,   # only 'r' part of the dictionary is used   
            {'dnl': matrix(0.0, (0, 1)), 'dnli': matrix(0.0, (0, 1)),
             'd': matrix(0.0, (0, 1)), 'di': matrix(0.0, (0, 1)),
             'v': [], 'beta': [], 'r': [ U ], 'rti': [ U ]}) 
        for i in range(n):
            blas.tbsv(sqrtG, Asc, n = msq, k = 0, ldA = 1, offsetx = i*msq)

        # Convert columns of Asc to packed storage
        misc.pack2(Asc, {'l': 0, 'q': [], 's': [ m ]})

        # Cholesky factorization of Asc' * Asc.
        H = matrix(0.0, (n, n))
        blas.syrk(Asc, H, trans = 'T', k = mpckd)
        lapack.potrf(H)


        def solve(x, y, z):
            """

            1. Solve for usx[0]:

               Asc'(Asc(usx[0]))
                   = bx0 + Asc'( ( bsz0 - bsz1 + S * bsx[1] * S ) ./ sqrtG)
                   = bx0 + Asc'( ( bsz0 + S * ( bsx[1] - bssz1) S ) 
                     ./ sqrtG)

               where bsx[1] = U^-1 * bx[1] * U^-T, bsz0 = U' * bz0 * U, 
               bsz1 = U' * bz1 * U, bssz1 = S^-1 * bsz1 * S^-1 

            2. Solve for usx[1]:

               usx[1] + S * usx[1] * S 
                   = S * ( As(usx[0]) + bsx[1] - bsz0 ) * S - bsz1 

               usx[1] 
                   = ( S * (As(usx[0]) + bsx[1] - bsz0) * S - bsz1) ./ Gamma
                   = -bsz0 + (S * As(usx[0]) * S) ./ Gamma
                     + (bsz0 - bsz1 + S * bsx[1] * S ) . / Gamma
                   = -bsz0 + (S * As(usx[0]) * S) ./ Gamma
                     + (bsz0 + S * ( bsx[1] - bssz1 ) * S ) . / Gamma

               Unscale ux[1] = Uti * usx[1] * Uti'

            3. Compute usz0, usz1

               r0' * uz0 * r0 = r0^-1 * ( A(ux[0]) - ux[1] - bz0 ) * r0^-T
               r1' * uz1 * r1 = r1^-1 * ( -ux[1] - bz1 ) * r1^-T

            """

            # z0 := U' * z0 * U 
            #     = bsz0
            __cngrnc(U, z, trans = 'T')

            # z1 := Us' * bz1 * Us 
            #     = S^-1 * U' * bz1 * U * S^-1
            #     = S^-1 * bsz1 * S^-1
            __cngrnc(Us, z, trans = 'T', offsetx = msq)

            # x[1] := Uti' * x[1] * Uti 
            #       = bsx[1]
            __cngrnc(Uti, x[1], trans = 'T')
        
            # x[1] := x[1] - z[msq:] 
            #       = bsx[1] - S^-1 * bsz1 * S^-1
            blas.axpy(z, x[1], alpha = -1.0, offsetx = msq)


            # x1 = (S * x[1] * S + z[:msq] ) ./ sqrtG
            #    = (S * ( bsx[1] - S^-1 * bsz1 * S^-1) * S + bsz0 ) ./ sqrtG
            #    = (S * bsx[1] * S - bsz1 + bsz0 ) ./ sqrtG
            # in packed storage
            blas.copy(x[1], x1)
            blas.tbmv(S, x1, n = msq, k = 0, ldA = 1)
            blas.axpy(z, x1, n = msq)
            blas.tbsv(sqrtG, x1, n = msq, k = 0, ldA = 1)
            misc.pack2(x1, {'l': 0, 'q': [], 's': [m]})

            # x[0] := x[0] + Asc'*x1 
            #       = bx0 + Asc'( ( bsz0 - bsz1 + S * bsx[1] * S ) ./ sqrtG)
            #       = bx0 + As'( ( bz0 - bz1 + S * bx[1] * S ) ./ Gamma )
            blas.gemv(Asc, x1, x[0], m = mpckd, trans = 'T', beta = 1.0)

            # x[0] := H^-1 * x[0]
            #       = ux[0]
            lapack.potrs(H, x[0])


            # x1 = Asc(x[0]) .* sqrtG  (unpacked)
            #    = As(x[0])  
            blas.gemv(Asc, x[0], tmp, m = mpckd)
            misc.unpack(tmp, x1, {'l': 0, 'q': [], 's': [m]})
            blas.tbmv(sqrtG, x1, n = msq, k = 0, ldA = 1)


            # usx[1] = (x1 + (x[1] - z[:msq])) ./ sqrtG**2 
            #        = (As(ux[0]) + bsx[1] - bsz0 - S^-1 * bsz1 * S^-1) 
            #           ./ Gamma

            # x[1] := x[1] - z[:msq] 
            #       = bsx[1] - bsz0 - S^-1 * bsz1 * S^-1
            blas.axpy(z, x[1], -1.0, n = msq)

            # x[1] := x[1] + x1
            #       = As(ux) + bsx[1] - bsz0 - S^-1 * bsz1 * S^-1 
            blas.axpy(x1, x[1])

            # x[1] := x[1] / Gammma
            #       = (As(ux) + bsx[1] - bsz0 + S^-1 * bsz1 * S^-1 ) / Gamma
            #       = S^-1 * usx[1] * S^-1
            blas.tbsv(Gamma, x[1], n = msq, k = 0, ldA = 1)
            

            # z[msq:] := r1' * U * (-z[msq:] - x[1]) * U * r1
            #         := -r1' * U * S^-1 * (bsz1 + ux[1]) * S^-1 *  U * r1
            #         := -r1' * uz1 * r1
            blas.axpy(x[1], z, n = msq, offsety = msq)
            blas.scal(-1.0, z, offset = msq)
            __cngrnc(U, z, offsetx = msq)
            __cngrnc(W['r'][1], z, trans = 'T', offsetx = msq)

            # x[1] :=  S * x[1] * S
            #       =  usx1 
            blas.tbmv(S, x[1], n = msq, k = 0, ldA = 1)

            # z[:msq] = r0' * U' * ( x1 - x[1] - z[:msq] ) * U * r0
            #         = r0' * U' * ( As(ux) - usx1 - bsz0 ) * U * r0
            #         = r0' * U' *  usz0 * U * r0
            #         = r0' * uz0 * r0
            blas.axpy(x1, z, -1.0, n = msq)
            blas.scal(-1.0, z, n = msq)
            blas.axpy(x[1], z, -1.0, n = msq)
            __cngrnc(U, z)
            __cngrnc(W['r'][0], z, trans = 'T')

            # x[1] := Uti * x[1] * Uti'
            #       = ux[1]
            __cngrnc(Uti, x[1])


        return solve
コード例 #28
0
ファイル: proxlib.py プロジェクト: Undefined-User/OpenCourse
    def F(W):
        # SVD R[j] = U[j] * diag(sig[j]) * Vt[j]
        lapack.gesvd(+W['r'][0], sv, jobu='A', jobvt='A', U=U, Vt=Vt)

        # Vt[j] := diag(sig[j])^-1 * Vt[j]
        for k in xrange(ns):
            blas.tbsv(sv, Vt, n=ns, k=0, ldA=1, offsetx=k * ns)

        # Gamma[j] is an ns[j] x ns[j] symmetric matrix
        #
        #  (sig[j] * sig[j]') ./  sqrt(1 + rho * (sig[j] * sig[j]').^2)

        # S = sig[j] * sig[j]'
        S = matrix(0.0, (ns, ns))
        blas.syrk(sv, S)
        Gamma = div(S, sqrt(1.0 + rho * S**2))
        symmetrize(Gamma, ns)

        # As represents the scaled mapping
        #
        #     As(x) = A(u * (Gamma .* x) * u')
        #    As'(y) = Gamma .* (u' * A'(y) * u)
        #
        # stored in a similar format as A, except that we use packed
        # storage for the columns of As[i][j].

        if type(A) is spmatrix:
            blas.scal(0.0, As)
            try:
                As[VecAIndex] = +A['s'][VecAIndex]
            except:
                As[VecAIndex] = +A[VecAIndex]
        else:
            blas.copy(A, As)

        # As[i][j][:,k] = diag( diag(Gamma[j]))*As[i][j][:,k]
        # As[i][j][l,:] = Gamma[j][l,l]*As[i][j][l,:]
        for k in xrange(ms):
            cngrnc(U, As, trans='T', offsetx=k * (ns2))
            blas.tbmv(Gamma, As, n=ns2, k=0, ldA=1, offsetx=k * (ns2))

        misc.pack(As, Aspkd, {'l': 0, 'q': [], 's': [ns] * ms})

        # H is an m times m block matrix with i, k block
        #
        #      Hik = sum_j As[i,j]' * As[k,j]
        #
        # of size ms[i] x ms[k].  Hik = 0 if As[i,j] or As[k,j]
        # are zero for all j
        H = matrix(0.0, (ms, ms))
        blas.syrk(Aspkd, H, trans='T', beta=1.0, k=ns * (ns + 1) / 2)

        lapack.potrf(H)

        def solve(x, y, z):
            """
            Returns solution of 

                rho * ux + A'(uy) - r^-T * uz * r^-1 = bx
                A(ux)                                = by
                -ux               - r * uz * r'      = bz.

            On entry, x = bx, y = by, z = bz.
            On exit, x = ux, y = uy, z = uz.
            """

            # bz is a copy of z in the format of x
            blas.copy(z, bz)
            blas.axpy(bz, x, alpha=rho)

            # x := Gamma .* (u' * x * u)
            #    = Gamma .* (u' * (bx + rho * bz) * u)

            cngrnc(U, x, trans='T', offsetx=0)
            blas.tbmv(Gamma, x, n=ns2, k=0, ldA=1, offsetx=0)

            # y := y - As(x)
            #   := by - As( Gamma .* u' * (bx + rho * bz) * u)
            #blas.copy(x,xp)
            #pack_ip(xp,n = ns,m=1,nl=nl)
            misc.pack(x, xp, {'l': 0, 'q': [], 's': [ns]})

            blas.gemv(Aspkd, xp, y, trans = 'T',alpha = -1.0, beta = 1.0, \
                m = ns*(ns+1)/2, n = ms,offsetx = 0)

            # y := -y - A(bz)
            #    = -by - A(bz) + As(Gamma .*  (u' * (bx + rho * bz) * u)
            Af(bz, y, alpha=-1.0, beta=-1.0)

            # y := H^-1 * y
            #    = H^-1 ( -by - A(bz) + As(Gamma.* u'*(bx + rho*bz)*u) )
            #    = uy

            blas.trsv(H, y)
            blas.trsv(H, y, trans='T')

            # bz = Vt' * vz * Vt
            #    = uz where
            # vz := Gamma .* ( As'(uy)  - x )
            #     = Gamma .* ( As'(uy)  - Gamma .* (u'*(bx + rho *bz)*u) )
            #     = Gamma.^2 .* ( u' * (A'(uy) - bx - rho * bz) * u ).
            #blas.copy(x,xp)
            #pack_ip(xp,n=ns,m=1,nl=nl)

            misc.pack(x, xp, {'l': 0, 'q': [], 's': [ns]})
            blas.scal(-1.0, xp)

            blas.gemv(Aspkd,
                      y,
                      xp,
                      alpha=1.0,
                      beta=1.0,
                      m=ns * (ns + 1) / 2,
                      n=ms,
                      offsety=0)

            # bz[j] is xp unpacked and multiplied with Gamma
            misc.unpack(xp, bz, {'l': 0, 'q': [], 's': [ns]})
            blas.tbmv(Gamma, bz, n=ns2, k=0, ldA=1, offsetx=0)

            # bz = Vt' * bz * Vt
            #    = uz
            cngrnc(Vt, bz, trans='T', offsetx=0)

            symmetrize(bz, ns, offset=0)

            # x = -bz - r * uz * r'
            # z contains r.h.s. bz;  copy to x
            blas.copy(z, x)
            blas.copy(bz, z)

            cngrnc(W['r'][0], bz, offsetx=0)
            blas.axpy(bz, x)
            blas.scal(-1.0, x)

        return solve
コード例 #29
0
ファイル: testqcl1.py プロジェクト: hrautila/go.opt
    def Fkkt(W):

        # Returns a function f(x, y, z) that solves
        #
        #     [ 0   G'   ] [ x ] = [ bx ]
        #     [ G  -W'*W ] [ z ]   [ bz ].

        # First factor
        #
        #     S = G' * W**-1 * W**-T * G
        #       = [0; -A]' * W3^-2 * [0; -A] + 4 * (W1**2 + W2**2)**-1
        #
        # where
        #
        #     W1 = diag(d1) with d1 = W['d'][:n] = 1 ./ W['di'][:n]
        #     W2 = diag(d2) with d2 = W['d'][n:] = 1 ./ W['di'][n:]
        #     W3 = beta * (2*v*v' - J),  W3^-1 = 1/beta * (2*J*v*v'*J - J)
        #        with beta = W['beta'][0], v = W['v'][0], J = [1, 0; 0, -I].

        # As = W3^-1 * [ 0 ; -A ] = 1/beta * ( 2*J*v * v' - I ) * [0; A]

        minor = 0
        if not helpers.sp_minor_empty():
            minor = helpers.sp_minor_top()

        beta, v = W['beta'][0], W['v'][0]
        As = 2 * v * (v[1:].T * A)
        As[1:, :] *= -1.0
        As[1:, :] -= A
        As /= beta

        # S = As'*As + 4 * (W1**2 + W2**2)**-1
        S = As.T * As
        helpers.sp_add_var("S", S)

        d1, d2 = W['d'][:n], W['d'][n:]

        d = 4.0 * (d1**2 + d2**2)**-1
        S[::n + 1] += d
        lapack.potrf(S)
        helpers.sp_create("00-Fkkt", minor)

        def f(x, y, z):

            minor = 0
            if not helpers.sp_minor_empty():
                minor = helpers.sp_minor_top()
            else:
                global loopf
                loopf += 1
                minor = loopf
            helpers.sp_create("00-f", minor)

            # z := - W**-T * z
            z[:n] = -div(z[:n], d1)
            z[n:2 * n] = -div(z[n:2 * n], d2)

            z[2 * n:] -= 2.0 * v * (v[0] * z[2 * n] -
                                    blas.dot(v[1:], z[2 * n + 1:]))
            z[2 * n + 1:] *= -1.0
            z[2 * n:] /= beta

            # x := x - G' * W**-1 * z
            x[:n] -= div(z[:n], d1) - div(z[n:2 * n], d2) + As.T * z[-(m + 1):]
            x[n:] += div(z[:n], d1) + div(z[n:2 * n], d2)
            helpers.sp_create("15-f", minor)

            # Solve for x[:n]:
            #
            #    S*x[:n] = x[:n] - (W1**2 - W2**2)(W1**2 + W2**2)^-1 * x[n:]

            x[:n] -= mul(div(d1**2 - d2**2, d1**2 + d2**2), x[n:])
            helpers.sp_create("25-f", minor)

            lapack.potrs(S, x)
            helpers.sp_create("30-f", minor)

            # Solve for x[n:]:
            #
            #    (d1**-2 + d2**-2) * x[n:] = x[n:] + (d1**-2 - d2**-2)*x[:n]

            x[n:] += mul(d1**-2 - d2**-2, x[:n])
            helpers.sp_create("35-f", minor)

            x[n:] = div(x[n:], d1**-2 + d2**-2)
            helpers.sp_create("40-f", minor)

            # z := z + W^-T * G*x
            z[:n] += div(x[:n] - x[n:2 * n], d1)
            helpers.sp_create("44-f", minor)

            z[n:2 * n] += div(-x[:n] - x[n:2 * n], d2)
            helpers.sp_create("48-f", minor)

            z[2 * n:] += As * x[:n]
            helpers.sp_create("50-f", minor)

        return f
コード例 #30
0
ファイル: solvers.py プロジェクト: artuntun/convexThesis
def custom_kkt(W):
    """
    Custom KKT solver for the following conic LP
    formulation of the Schur relaxation of the
    balance-constrained min/max cut problem
    
        maximize     Tr(C,X)
        subject to 
            X_{ii} = 1, i=1...n
            sum(X) + x = const
            x >= 0, X psd
    """
    r = W['rti'][0]
    N = r.size[0]
    e = matrix(1.0, (N, 1))

    # Form and factorize reduced KKT system
    H = matrix(0.0, (N + 1, N + 1))
    blas.syrk(r, H, n=N, ldC=N + 1)
    blas.symv(H, e, H, n=N, ldA=N + 1, offsety=N, incy=N + 1)
    H[N, N] = blas.dot(H, e, n=N, offsetx=N, incx=N + 1)
    rr = H[:N, :N]  # Extract and symmetrize (1,1) block
    misc.symm(rr, N)  #
    q = H[N, :N].T  # Extract q = rr*e
    H = mul(H, H)
    H[N, N] += W['di'][0]**2
    lapack.potrf(H)

    def fsolve(x, y, z):
        """
        Solves the system of equations

            [ 0  G'*W^{-1} ] [ ux ] = [ bx ]
            [ G  -W'       ] [ uz ]   [ bz ]
        
        """
        #  Compute bx := bx + G'*W^{-1}*W^{-T}*bz
        v = matrix(0., (N, 1))
        for i in range(N):
            blas.symv(z, rr, v, ldA=N, offsetA=1, n=N, offsetx=N * i)
            x[i] += blas.dot(rr, v, n=N, offsetx=N * i)
        blas.symv(z, q, v, ldA=N, offsetA=1, n=N)
        x[N] += blas.dot(q, v) + z[0] * W['di'][0]**2
        #  Solve G'*W^{-1}*W^{-T}*G*ux = bx
        lapack.potrs(H, x)

        # Compute bz := -W^{-T}*(bz-G*ux)
        # z -= G*x
        z[1::N + 1] -= x[:-1]
        z -= x[-1]
        # Apply scaling
        z[0] *= -W['di'][0]
        blas.scal(0.5, z, n=N, offset=1, inc=N + 1)
        tmp = +r
        blas.trmm(z, tmp, ldA=N, offsetA=1, n=N, m=N)
        blas.syr2k(r,
                   tmp,
                   z,
                   trans='T',
                   offsetC=1,
                   ldC=N,
                   n=N,
                   k=N,
                   alpha=-1.0)

    return fsolve
コード例 #31
0
ファイル: ellipsoids.py プロジェクト: AlbertHolmes/cvxopt
    H1[3:,2] = -2.0 * c[1] * B[:,1] 
    H1[3:,3:] = 2*B

    return f, Df, z[0]*H0 + sum(z[1:])*H1
    
sol = solvers.cp(F)
A = matrix( sol['x'][[0, 1, 1, 2]], (2,2)) 
b = sol['x'][3:]

if pylab_installed:
    pylab.figure(1, facecolor='w')
    pylab.plot(X[:,0], X[:,1], 'ko', X[:,0], X[:,1], '-k')
    
    # Ellipsoid in the form { x | || L' * (x-c) ||_2 <= 1 }
    L = +A
    lapack.potrf(L)
    c = +b
    lapack.potrs(L, c)    
    
    # 1000 points on the unit circle
    nopts = 1000
    angles = matrix( [ a*2.0*pi/nopts for a in range(nopts) ], (1,nopts) )
    circle = matrix(0.0, (2,nopts))
    circle[0,:], circle[1,:] = cos(angles), sin(angles)
    
    # ellipse = L^-T * circle + c
    blas.trsm(L, circle, transA='T')
    ellipse = circle + c[:, nopts*[0]]
    ellipse2 = 0.5 * circle + c[:, nopts*[0]]
    
    pylab.plot(ellipse[0,:].T, ellipse[1,:].T, 'k-')
コード例 #32
0
Hac = G.T * spdiag((h-G*xac)**-1) * G

if pylab_installed:
    pylab.figure(3, facecolor='w')

    # polyhedron
    for k in range(m):
        edge = X[[k,k+1],:] + 0.1 * matrix([1., 0., 0., -1.], (2,2)) * \
            (X[2*[k],:] - X[2*[k+1],:])
        pylab.plot(edge[:,0], edge[:,1], 'k')
    
    
    # 1000 points on the unit circle
    nopts = 1000
    angles = matrix( [ a*2.0*pi/nopts for a in range(nopts) ], (1,nopts) )
    circle = matrix(0.0, (2,nopts))
    circle[0,:], circle[1,:] = cos(angles), sin(angles)
    
    # ellipse = L^-T * circle + xc  where Hac = L*L'
    lapack.potrf(Hac)
    ellipse = +circle
    blas.trsm(Hac, ellipse, transA='T')
    ellipse += xac[:, nopts*[0]]
    pylab.fill(ellipse[0,:].T, ellipse[1,:].T, facecolor = '#F0F0F0')
    pylab.plot([xac[0]], [xac[1]], 'ko')
    
    pylab.title('Analytic center (fig 8.7)')
    pylab.axis('equal')
    pylab.axis('off')
    pylab.show()
コード例 #33
0
ファイル: qcl1.py プロジェクト: AlbertHolmes/cvxopt
    def Fkkt(W): 

        # Returns a function f(x, y, z) that solves
        #
        #     [ 0   G'   ] [ x ] = [ bx ]
        #     [ G  -W'*W ] [ z ]   [ bz ].

        # First factor 
        #
        #     S = G' * W**-1 * W**-T * G
        #       = [0; -A]' * W3^-2 * [0; -A] + 4 * (W1**2 + W2**2)**-1 
        #
        # where
        #
        #     W1 = diag(d1) with d1 = W['d'][:n] = 1 ./ W['di'][:n]  
        #     W2 = diag(d2) with d2 = W['d'][n:] = 1 ./ W['di'][n:]  
        #     W3 = beta * (2*v*v' - J),  W3^-1 = 1/beta * (2*J*v*v'*J - J)  
        #        with beta = W['beta'][0], v = W['v'][0], J = [1, 0; 0, -I].
  
        # As = W3^-1 * [ 0 ; -A ] = 1/beta * ( 2*J*v * v' - I ) * [0; A]
        beta, v = W['beta'][0], W['v'][0]
        As = 2 * v * (v[1:].T * A)
        As[1:,:] *= -1.0
        As[1:,:] -= A
        As /= beta
      
        # S = As'*As + 4 * (W1**2 + W2**2)**-1
        S = As.T * As 
        d1, d2 = W['d'][:n], W['d'][n:]       
        d = 4.0 * (d1**2 + d2**2)**-1
        S[::n+1] += d
        lapack.potrf(S)

        def f(x, y, z):

            # z := - W**-T * z 
            z[:n] = -div( z[:n], d1 )
            z[n:2*n] = -div( z[n:2*n], d2 )
            z[2*n:] -= 2.0*v*( v[0]*z[2*n] - blas.dot(v[1:], z[2*n+1:]) ) 
            z[2*n+1:] *= -1.0
            z[2*n:] /= beta

            # x := x - G' * W**-1 * z
            x[:n] -= div(z[:n], d1) - div(z[n:2*n], d2) + As.T * z[-(m+1):]
            x[n:] += div(z[:n], d1) + div(z[n:2*n], d2) 

            # Solve for x[:n]:
            #
            #    S*x[:n] = x[:n] - (W1**2 - W2**2)(W1**2 + W2**2)^-1 * x[n:]
            
            x[:n] -= mul( div(d1**2 - d2**2, d1**2 + d2**2), x[n:]) 
            lapack.potrs(S, x)
            
            # Solve for x[n:]:
            #
            #    (d1**-2 + d2**-2) * x[n:] = x[n:] + (d1**-2 - d2**-2)*x[:n]
             
            x[n:] += mul( d1**-2 - d2**-2, x[:n])
            x[n:] = div( x[n:], d1**-2 + d2**-2)

            # z := z + W^-T * G*x 
            z[:n] += div( x[:n] - x[n:2*n], d1) 
            z[n:2*n] += div( -x[:n] - x[n:2*n], d2) 
            z[2*n:] += As*x[:n]

        return f
コード例 #34
0
ファイル: ellipsoids.py プロジェクト: sfu-db/quicksel
def F(x=None, z=None):
    if x is None:
        return m, matrix([1.0, 0.0, 1.0, 0.0, 0.0])

    # Factor A as A = L*L'.  Compute inverse B = A^-1.
    A = matrix([x[0], x[1], x[1], x[2]], (2, 2))
    L = +A
    try:
        lapack.potrf(L)
    except:
        return None
    B = +L
    lapack.potri(B)
    B[0, 1] = B[1, 0]

    # f0 = -log det A
    f = matrix(0.0, (m + 1, 1))
    f[0] = -2.0 * (log(L[0, 0]) + log(L[1, 1]))

    # fk = xk'*A*xk - 2*xk'*b + b*A^-1*b - 1
    #    = (xk - c)' * A * (xk - c) - 1  where c = A^-1*b
    c = x[3:]
    lapack.potrs(L, c)
    for k in range(m):
        f[k + 1] = (X[k, :].T - c).T * A * (X[k, :].T - c) - 1.0

    # gradf0 = (-A^-1, 0) = (-B, 0)
    Df = matrix(0.0, (m + 1, 5))
    Df[0, 0], Df[0, 1], Df[0, 2] = -B[0, 0], -2.0 * B[1, 0], -B[1, 1]

    # gradfk = (xk*xk' - A^-1*b*b'*A^-1,  2*(-xk + A^-1*b))
    #        = (xk*xk' - c*c', 2*(-xk+c))
    Df[1:, 0] = X[:m, 0]**2 - c[0]**2
    Df[1:, 1] = 2.0 * (mul(X[:m, 0], X[:m, 1]) - c[0] * c[1])
    Df[1:, 2] = X[:m, 1]**2 - c[1]**2
    Df[1:, 3] = 2.0 * (-X[:m, 0] + c[0])
    Df[1:, 4] = 2.0 * (-X[:m, 1] + c[1])

    if z is None: return f, Df

    # hessf0(Y, y) = (A^-1*Y*A^-1, 0) = (B*YB, 0)
    H0 = matrix(0.0, (5, 5))
    H0[0, 0] = B[0, 0]**2
    H0[1, 0] = 2.0 * B[0, 0] * B[1, 0]
    H0[2, 0] = B[1, 0]**2
    H0[1, 1] = 2.0 * (B[0, 0] * B[1, 1] + B[1, 0]**2)
    H0[2, 1] = 2.0 * B[1, 0] * B[1, 1]
    H0[2, 2] = B[1, 1]**2

    # hessfi(Y, y)
    #     = ( A^-1*Y*A^-1*b*b'*A^-1 + A^-1*b*b'*A^-1*Y*A^-1
    #             - A^-1*y*b'*A^-1 - A^-1*b*y'*A^-1,
    #         -2*A^-1*Y*A^-1*b + 2*A^-1*y )
    #     = ( B*Y*c*c' + c*c'*Y*B - B*y*c' - c*y'*B,  -2*B*Y*c + 2*B*y )
    #     = ( B*(Y*c-y)*c' + c*(Y*c-y)'*B, -2*B*(Y*c - y) )
    H1 = matrix(0.0, (5, 5))
    H1[0, 0] = 2.0 * c[0]**2 * B[0, 0]
    H1[1, 0] = 2.0 * (c[0] * c[1] * B[0, 0] + c[0]**2 * B[1, 0])
    H1[2, 0] = 2.0 * c[0] * c[1] * B[1, 0]
    H1[3:, 0] = -2.0 * c[0] * B[:, 0]
    H1[1,1] = 2.0 * c[0]**2 * B[1,1] + 4.0 * c[0]*c[1]*B[1,0]  + \
              2.0 * c[1]**2 + B[0,0]
    H1[2, 1] = 2.0 * (c[1]**2 * B[1, 0] + c[0] * c[1] * B[1, 1])
    H1[3:, 1] = -2.0 * B * c[[1, 0]]
    H1[2, 2] = 2.0 * c[1]**2 * B[1, 1]
    H1[3:, 2] = -2.0 * c[1] * B[:, 1]
    H1[3:, 3:] = 2 * B

    return f, Df, z[0] * H0 + sum(z[1:]) * H1
コード例 #35
0
def cholesky(A):
    """ Cholesky with clean-up """
    lapack.potrf(A)
    makeLT(A)
コード例 #36
0
ファイル: nucnrm.py プロジェクト: ab39826/IndexCoding
    def F(W):
        """
        Create a solver for the linear equations

                                C * ux + G' * uzl - 2*A'(uzs21) = bx
                                                         -uzs11 = bX1
                                                         -uzs22 = bX2
                                            G * ux - Dl^2 * uzl = bzl
            [ -uX1   -A(ux)' ]          [ uzs11 uzs21' ]     
            [                ] - r*r' * [              ] * r*r' = bzs
            [ -A(ux) -uX2    ]          [ uzs21 uzs22  ]

        where Dl = diag(W['l']), r = W['r'][0].  

        On entry, x = (bx, bX1, bX2) and z = [ bzl; bzs[:] ].
        On exit, x = (ux, uX1, uX2) and z = [ Dl*uzl; (r'*uzs*r)[:] ].


        1. Compute matrices V1, V2 such that (with T = r*r')
        
               [ V1   0   ] [ T11  T21' ] [ V1'  0  ]   [ I  S' ]
               [          ] [           ] [         ] = [       ]
               [ 0    V2' ] [ T21  T22  ] [ 0    V2 ]   [ S  I  ]
        
           and S = [ diag(s); 0 ], s a positive q-vector.

        2. Factor the mapping X -> X + S * X' * S:

               X + S * X' * S = L( L'( X )). 

        3. Compute scaled mappings: a matrix As with as its columns the 
           coefficients of the scaled mapping 

               L^-1( V2' * A() * V1' ) 

           and the matrix Gs = Dl^-1 * G.

        4. Cholesky factorization of H = C + Gs'*Gs + 2*As'*As.

        """


        # 1. Compute V1, V2, s.  

        r = W['r'][0]

        # LQ factorization R[:q, :] = L1 * Q1.
        lapack.lacpy(r, Q1, m = q)
        lapack.gelqf(Q1, tau1)
        lapack.lacpy(Q1, L1, n = q, uplo = 'L')
        lapack.orglq(Q1, tau1)

        # LQ factorization R[q:, :] = L2 * Q2.
        lapack.lacpy(r, Q2, m = p, offsetA = q)
	lapack.gelqf(Q2, tau2)
        lapack.lacpy(Q2, L2, n = p, uplo = 'L')
        lapack.orglq(Q2, tau2)


        # V2, V1, s are computed from an SVD: if
        # 
        #     Q2 * Q1' = U * diag(s) * V',
        #
        # then V1 = V' * L1^-1 and V2 = L2^-T * U.
    
        # T21 = Q2 * Q1.T  
        blas.gemm(Q2, Q1, T21, transB = 'T')

        # SVD T21 = U * diag(s) * V'.  Store U in V2 and V' in V1.
        lapack.gesvd(T21, s, jobu = 'A', jobvt = 'A', U = V2, Vt = V1) 

#        # Q2 := Q2 * Q1' without extracting Q1; store T21 in Q2
#        this will requires lapack.ormlq or lapack.unmlq

        # V2 = L2^-T * U   
        blas.trsm(L2, V2, transA = 'T') 

        # V1 = V' * L1^-1 
        blas.trsm(L1, V1, side = 'R') 


        # 2. Factorization X + S * X' * S = L( L'( X )).  
        #
        # The factor L is stored as a diagonal matrix D and a sparse lower 
        # triangular matrix P, such that  
        #
        #     L(X)[:] = D**-1 * (I + P) * X[:] 
        #     L^-1(X)[:] = D * (I - P) * X[:].

        # SS is q x q with SS[i,j] = si*sj.
        blas.scal(0.0, SS)
        blas.syr(s, SS)    
        
        # For a p x q matrix X, P*X[:] is Y[:] where 
        #
        #     Yij = si * sj * Xji  if i < j
        #         = 0              otherwise.
        # 
        P.V = SS[Itril2]

        # For a p x q matrix X, D*X[:] is Y[:] where 
        #
        #     Yij = Xij / sqrt( 1 - si^2 * sj^2 )  if i < j
        #         = Xii / sqrt( 1 + si^2 )         if i = j
        #         = Xij                            otherwise.
        # 
        DV[Idiag] = sqrt(1.0 + SS[::q+1])
        DV[Itriu] = sqrt(1.0 - SS[Itril3]**2)
        D.V = DV**-1


        # 3. Scaled linear mappings 
         
        # Ask :=  V2' * Ask * V1' 
        blas.scal(0.0, As)
        base.axpy(A, As)
        for i in xrange(n):
            # tmp := V2' * As[i, :]
            blas.gemm(V2, As, tmp, transA = 'T', m = p, n = q, k = p,
                ldB = p, offsetB = i*p*q)
            # As[:,i] := tmp * V1'
            blas.gemm(tmp, V1, As, transB = 'T', m = p, n = q, k = q,
                ldC = p, offsetC = i*p*q)

        # As := D * (I - P) * As 
        #     = L^-1 * As.
        blas.copy(As, As2)
        base.gemm(P, As, As2, alpha = -1.0, beta = 1.0)
        base.gemm(D, As2, As)

        # Gs := Dl^-1 * G 
        blas.scal(0.0, Gs)
        base.axpy(G, Gs)
        for k in xrange(n):
            blas.tbmv(W['di'], Gs, n = m, k = 0, ldA = 1, offsetx = k*m)


        # 4. Cholesky factorization of H = C + Gs' * Gs + 2 * As' * As.

        blas.syrk(As, H, trans = 'T', alpha = 2.0)
        blas.syrk(Gs, H, trans = 'T', beta = 1.0)
        base.axpy(C, H)   
        lapack.potrf(H)


        def f(x, y, z):
            """

            Solve 

                              C * ux + G' * uzl - 2*A'(uzs21) = bx
                                                       -uzs11 = bX1
                                                       -uzs22 = bX2
                                           G * ux - D^2 * uzl = bzl
                [ -uX1   -A(ux)' ]       [ uzs11 uzs21' ]     
                [                ] - T * [              ] * T = bzs.
                [ -A(ux) -uX2    ]       [ uzs21 uzs22  ]

            On entry, x = (bx, bX1, bX2) and z = [ bzl; bzs[:] ].
            On exit, x = (ux, uX1, uX2) and z = [ D*uzl; (r'*uzs*r)[:] ].

            Define X = uzs21, Z = T * uzs * T:   
 
                      C * ux + G' * uzl - 2*A'(X) = bx
                                [ 0  X' ]               [ bX1 0   ]
                            T * [       ] * T - Z = T * [         ] * T
                                [ X  0  ]               [ 0   bX2 ]
                               G * ux - D^2 * uzl = bzl
                [ -uX1   -A(ux)' ]   [ Z11 Z21' ]     
                [                ] - [          ] = bzs
                [ -A(ux) -uX2    ]   [ Z21 Z22  ]

            Return x = (ux, uX1, uX2), z = [ D*uzl; (rti'*Z*rti)[:] ].

            We use the congruence transformation 

                [ V1   0   ] [ T11  T21' ] [ V1'  0  ]   [ I  S' ]
                [          ] [           ] [         ] = [       ]
                [ 0    V2' ] [ T21  T22  ] [ 0    V2 ]   [ S  I  ]

            and the factorization 

                X + S * X' * S = L( L'(X) ) 

            to write this as

                                  C * ux + G' * uzl - 2*A'(X) = bx
                L'(V2^-1 * X * V1^-1) - L^-1(V2' * Z21 * V1') = bX
                                           G * ux - D^2 * uzl = bzl
                            [ -uX1   -A(ux)' ]   [ Z11 Z21' ]     
                            [                ] - [          ] = bzs,
                            [ -A(ux) -uX2    ]   [ Z21 Z22  ]

            or

                C * ux + Gs' * uuzl - 2*As'(XX) = bx
                                      XX - ZZ21 = bX
                                 Gs * ux - uuzl = D^-1 * bzl
                                 -As(ux) - ZZ21 = bbzs_21
                                     -uX1 - Z11 = bzs_11
                                     -uX2 - Z22 = bzs_22

            if we introduce scaled variables

                uuzl = D * uzl
                  XX = L'(V2^-1 * X * V1^-1) 
                     = L'(V2^-1 * uzs21 * V1^-1)
                ZZ21 = L^-1(V2' * Z21 * V1') 

            and define

                bbzs_21 = L^-1(V2' * bzs_21 * V1')
                                           [ bX1  0   ]
                     bX = L^-1( V2' * (T * [          ] * T)_21 * V1').
                                           [ 0    bX2 ]           
 
            Eliminating Z21 gives 

                C * ux + Gs' * uuzl - 2*As'(XX) = bx
                                 Gs * ux - uuzl = D^-1 * bzl
                                   -As(ux) - XX = bbzs_21 - bX
                                     -uX1 - Z11 = bzs_11
                                     -uX2 - Z22 = bzs_22 

            and eliminating uuzl and XX gives

                        H * ux = bx + Gs' * D^-1 * bzl + 2*As'(bX - bbzs_21)
                Gs * ux - uuzl = D^-1 * bzl
                  -As(ux) - XX = bbzs_21 - bX
                    -uX1 - Z11 = bzs_11
                    -uX2 - Z22 = bzs_22.


            In summary, we can use the following algorithm: 

            1. bXX := bX - bbzs21
                                        [ bX1 0   ]
                    = L^-1( V2' * ((T * [         ] * T)_21 - bzs_21) * V1')
                                        [ 0   bX2 ]

            2. Solve H * ux = bx + Gs' * D^-1 * bzl + 2*As'(bXX).

            3. From ux, compute 

                   uuzl = Gs*ux - D^-1 * bzl and 
                      X = V2 * L^-T(-As(ux) + bXX) * V1.

            4. Return ux, uuzl, 

                   rti' * Z * rti = r' * [ -bX1, X'; X, -bX2 ] * r
 
               and uX1 = -Z11 - bzs_11,  uX2 = -Z22 - bzs_22.

            """

            # Save bzs_11, bzs_22, bzs_21.
            lapack.lacpy(z, bz11, uplo = 'L', m = q, n = q, ldA = p+q,
                offsetA = m)
            lapack.lacpy(z, bz21, m = p, n = q, ldA = p+q, offsetA = m+q)
            lapack.lacpy(z, bz22, uplo = 'L', m = p, n = p, ldA = p+q,
                offsetA = m + (p+q+1)*q)


            # zl := D^-1 * zl
            #     = D^-1 * bzl
            blas.tbmv(W['di'], z, n = m, k = 0, ldA = 1)


            # zs := r' * [ bX1, 0; 0, bX2 ] * r.

            # zs := [ bX1, 0; 0, bX2 ]
            blas.scal(0.0, z, offset = m)
            lapack.lacpy(x[1], z, uplo = 'L', m = q, n = q, ldB = p+q,
                offsetB = m)
            lapack.lacpy(x[2], z, uplo = 'L', m = p, n = p, ldB = p+q,
                offsetB = m + (p+q+1)*q)

            # scale diagonal of zs by 1/2
            blas.scal(0.5, z, inc = p+q+1, offset = m)

            # a := tril(zs)*r  
            blas.copy(r, a)
            blas.trmm(z, a, side = 'L', m = p+q, n = p+q, ldA = p+q, ldB = 
                p+q, offsetA = m)

            # zs := a'*r + r'*a 
            blas.syr2k(r, a, z, trans = 'T', n = p+q, k = p+q, ldB = p+q,
                ldC = p+q, offsetC = m)



            # bz21 := L^-1( V2' * ((r * zs * r')_21 - bz21) * V1')
            #
            #                           [ bX1 0   ]
            #       = L^-1( V2' * ((T * [         ] * T)_21 - bz21) * V1').
            #                           [ 0   bX2 ]

            # a = [ r21 r22 ] * z
            #   = [ r21 r22 ] * r' * [ bX1, 0; 0, bX2 ] * r
            #   = [ T21  T22 ] * [ bX1, 0; 0, bX2 ] * r
            blas.symm(z, r, a, side = 'R', m = p, n = p+q, ldA = p+q, 
                ldC = p+q, offsetB = q)
    
            # bz21 := -bz21 + a * [ r11, r12 ]'
            #       = -bz21 + (T * [ bX1, 0; 0, bX2 ] * T)_21
            blas.gemm(a, r, bz21, transB = 'T', m = p, n = q, k = p+q, 
                beta = -1.0, ldA = p+q, ldC = p)

            # bz21 := V2' * bz21 * V1'
            #       = V2' * (-bz21 + (T*[bX1, 0; 0, bX2]*T)_21) * V1'
            blas.gemm(V2, bz21, tmp, transA = 'T', m = p, n = q, k = p, 
                ldB = p)
            blas.gemm(tmp, V1, bz21, transB = 'T', m = p, n = q, k = q, 
                ldC = p)

            # bz21[:] := D * (I-P) * bz21[:] 
            #       = L^-1 * bz21[:]
            #       = bXX[:]
            blas.copy(bz21, tmp)
            base.gemv(P, bz21, tmp, alpha = -1.0, beta = 1.0)
            base.gemv(D, tmp, bz21)


            # Solve H * ux = bx + Gs' * D^-1 * bzl + 2*As'(bXX).

            # x[0] := x[0] + Gs'*zl + 2*As'(bz21) 
            #       = bx + G' * D^-1 * bzl + 2 * As'(bXX)
            blas.gemv(Gs, z, x[0], trans = 'T', alpha = 1.0, beta = 1.0)
            blas.gemv(As, bz21, x[0], trans = 'T', alpha = 2.0, beta = 1.0) 

            # x[0] := H \ x[0] 
            #      = ux
            lapack.potrs(H, x[0])


            # uuzl = Gs*ux - D^-1 * bzl
            blas.gemv(Gs, x[0], z, alpha = 1.0, beta = -1.0)

            
            # bz21 := V2 * L^-T(-As(ux) + bz21) * V1
            #       = X
            blas.gemv(As, x[0], bz21, alpha = -1.0, beta = 1.0)
            blas.tbsv(DV, bz21, n = p*q, k = 0, ldA = 1)
            blas.copy(bz21, tmp)
            base.gemv(P, tmp, bz21, alpha = -1.0, beta = 1.0, trans = 'T')
            blas.gemm(V2, bz21, tmp)
            blas.gemm(tmp, V1, bz21)


            # zs := -zs + r' * [ 0, X'; X, 0 ] * r
            #     = r' * [ -bX1, X'; X, -bX2 ] * r.

            # a := bz21 * [ r11, r12 ]
            #   =  X * [ r11, r12 ]
            blas.gemm(bz21, r, a, m = p, n = p+q, k = q, ldA = p, ldC = p+q)
            
            # z := -z + [ r21, r22 ]' * a + a' * [ r21, r22 ]
            #    = rti' * uzs * rti
            blas.syr2k(r, a, z, trans = 'T', beta = -1.0, n = p+q, k = p,
                offsetA = q, offsetC = m, ldB = p+q, ldC = p+q)  



            # uX1 = -Z11 - bzs_11 
            #     = -(r*zs*r')_11 - bzs_11
            # uX2 = -Z22 - bzs_22 
            #     = -(r*zs*r')_22 - bzs_22


            blas.copy(bz11, x[1])
            blas.copy(bz22, x[2])

            # scale diagonal of zs by 1/2
            blas.scal(0.5, z, inc = p+q+1, offset = m)

            # a := r*tril(zs)  
            blas.copy(r, a)
            blas.trmm(z, a, side = 'R', m = p+q, n = p+q, ldA = p+q, ldB = 
                p+q, offsetA = m)

            # x[1] := -x[1] - a[:q,:] * r[:q, :]' - r[:q,:] * a[:q,:]'
            #       = -bzs_11 - (r*zs*r')_11
            blas.syr2k(a, r, x[1], n = q, alpha = -1.0, beta = -1.0) 

            # x[2] := -x[2] - a[q:,:] * r[q:, :]' - r[q:,:] * a[q:,:]'
            #       = -bzs_22 - (r*zs*r')_22
            blas.syr2k(a, r, x[2], n = p, alpha = -1.0, beta = -1.0, 
                offsetA = q, offsetB = q)

            # scale diagonal of zs by 1/2
            blas.scal(2.0, z, inc = p+q+1, offset = m)


        return f
コード例 #37
0
ファイル: completion.py プロジェクト: cvxopt/chompack
def completion(X, factored_updates = True):
    """
    Supernodal multifrontal maximum determinant positive definite
    matrix completion. The routine computes the Cholesky factor
    :math:`L` of the inverse of the maximum determinant positive
    definite matrix completion of :math:`X`:, i.e.,

    .. math::
         P( S^{-1} ) = X

    where :math:`S = LL^T`. On exit, the argument `X` contains the
    lower-triangular Cholesky factor :math:`L`.

    The optional argument `factored_updates` can be used to enable (if
    True) or disable (if False) updating of intermediate
    factorizations.

    :param X:                 :py:class:`cspmatrix`
    :param factored_updates:  boolean
    """

    assert isinstance(X, cspmatrix) and X.is_factor is False, "X must be a cspmatrix"

    n = X.symb.n
    snpost = X.symb.snpost
    snptr = X.symb.snptr
    chptr = X.symb.chptr
    chidx = X.symb.chidx

    relptr = X.symb.relptr
    relidx = X.symb.relidx
    blkptr = X.symb.blkptr
    blkval = X.blkval

    stack = []

    for k in reversed(list(snpost)):

        nn = snptr[k+1]-snptr[k]       # |Nk|
        na = relptr[k+1]-relptr[k]     # |Ak|
        nj = na + nn

        # allocate F and copy X_{Jk,Nk} to leading columns of F
        F = matrix(0.0, (nj,nj))
        lapack.lacpy(blkval, F, offsetA = blkptr[k], ldA = nj, m = nj, n = nn, uplo = 'L')

        # if supernode k is not a root node:
        if na > 0:
            # copy Vk to 2,2 block of F
            Vk = stack.pop()
            lapack.lacpy(Vk, F, offsetB = nn*nj+nn, m = na, n = na, uplo = 'L')

        # if supernode k has any children:
        for ii in range(chptr[k],chptr[k+1]):
            i = chidx[ii]       
            if factored_updates:
                r = relidx[relptr[i]:relptr[i+1]]
                stack.append(frontal_get_update_factor(F,r,nn,na))
            else:
                stack.append(frontal_get_update(F,relidx,relptr,i))

        # if supernode k is not a root node:
        if na > 0:
            if factored_updates:
                # In this case we have Vk = Lk'*Lk
                trL1 = 'T'
                trL2 = 'N'                
            else:
                # factorize Vk 
                lapack.potrf(F, offsetA = nj*nn+nn, n = na, ldA = nj)
                # In this case we have Vk = Lk*Lk'
                trL1 = 'N'  
                trL2 = 'T'  

            # compute L_{Ak,Nk} and inv(D_{Nk,Nk}) = S_{Nk,Nk} - S_{Ak,Nk}'*L_{Ak,Nk}
            lapack.trtrs(F, blkval, offsetA = nj*nn+nn, trans = trL1,\
                         offsetB = blkptr[k]+nn, ldB = nj, n = na, nrhs = nn)
            blas.syrk(blkval, blkval, n = nn, k = na, trans= 'T', alpha = -1.0, beta = 1.0,
                      offsetA = blkptr[k]+nn, offsetC = blkptr[k], ldA = nj, ldC = nj)
            lapack.trtrs(F, blkval, offsetA = nj*nn+nn, trans = trL2,\
                         offsetB = blkptr[k]+nn, ldB = nj, n = na, nrhs = nn)                
            for i in range(nn):
                blas.scal(-1.0, blkval, n = na, offset = blkptr[k] + i*nj + nn)


        # factorize inv(D_{Nk,Nk}) as R*R' so that D_{Nk,Nk} = L*L' with L = inv(R)'
        lapack.lacpy(blkval, F, offsetA = blkptr[k], ldA = nj,\
                     ldB = nj, m = nn, n = nn, uplo = 'L') # copy    -- FIX!
        F[:nn,:nn] = matrix(F[:nn,:nn][::-1],(nn,nn))      # reverse -- FIX!
        lapack.potrf(F, ldA = nj, n = nn, uplo = 'U')      # factorize
        F[:nn,:nn] = matrix(F[:nn,:nn][::-1],(nn,nn))      # reverse -- FIX!
        lapack.lacpy(F, blkval, offsetB = blkptr[k], ldA = nj,\
                     ldB = nj, m = nn, n = nn, uplo = 'L') # copy    -- FIX!

        # compute L = inv(R')
        lapack.trtri(blkval, offsetA = blkptr[k], ldA = nj, n = nn)

    X._is_factor = True

    return
コード例 #38
0
ファイル: hessian.py プロジェクト: xinist/chompack
def __scale(L, Y, U, adj=False, inv=False, factored_updates=True):

    n = L.symb.n
    snpost = L.symb.snpost
    snptr = L.symb.snptr
    chptr = L.symb.chptr
    chidx = L.symb.chidx

    relptr = L.symb.relptr
    relidx = L.symb.relidx
    blkptr = L.symb.blkptr

    stack = []

    for k in reversed(list(snpost)):

        nn = snptr[k + 1] - snptr[k]  # |Nk|
        na = relptr[k + 1] - relptr[k]  # |Ak|
        nj = na + nn

        F = matrix(0.0, (nj, nj))
        lapack.lacpy(Y.blkval,
                     F,
                     m=nj,
                     n=nn,
                     ldA=nj,
                     offsetA=blkptr[k],
                     uplo='L')

        # if supernode k is not a root node:
        if na > 0:
            # copy Vk to 2,2 block of F
            Vk = stack.pop()
            lapack.lacpy(Vk,
                         F,
                         ldB=nj,
                         offsetB=nn * (nj + 1),
                         m=na,
                         n=na,
                         uplo='L')

        # if supernode k has any children:
        for ii in range(chptr[k], chptr[k + 1]):
            i = chidx[ii]
            if factored_updates:
                r = relidx[relptr[i]:relptr[i + 1]]
                stack.append(frontal_get_update_factor(F, r, nn, na))
            else:
                stack.append(frontal_get_update(F, relidx, relptr, i))

        # if supernode k is not a root node:
        if na > 0:
            if factored_updates:
                # In this case we have Vk = Lk'*Lk
                if adj is False: trns = 'N'
                elif adj is True: trns = 'T'
            else:
                # factorize Vk
                lapack.potrf(F, offsetA=nj * nn + nn, n=na, ldA=nj)
                # In this case we have Vk = Lk*Lk'
                if adj is False: trns = 'T'
                elif adj is True: trns = 'N'

        if adj is False: tr = ['T', 'N']
        elif adj is True: tr = ['N', 'T']

        if inv is False:
            for Ut in U:
                # symmetrize (1,1) block of Ut_{k} and scale
                U11 = matrix(0.0, (nn, nn))
                lapack.lacpy(Ut.blkval,
                             U11,
                             offsetA=blkptr[k],
                             m=nn,
                             n=nn,
                             ldA=nj,
                             uplo='L')
                U11 += U11.T
                U11[::nn + 1] *= 0.5
                lapack.lacpy(U11,
                             Ut.blkval,
                             offsetB=blkptr[k],
                             m=nn,
                             n=nn,
                             ldB=nj,
                             uplo='N')

                blas.trsm(L.blkval, Ut.blkval, side = 'R', transA = tr[0],\
                          m = nj, n = nn, offsetA = blkptr[k], ldA = nj,\
                          offsetB = blkptr[k], ldB = nj)
                blas.trsm(L.blkval, Ut.blkval, m = nn, n = nn, transA = tr[1],\
                          offsetA = blkptr[k], offsetB = blkptr[k],\
                          ldA = nj, ldB = nj)

                # zero-out strict upper triangular part of {Nj,Nj} block
                for i in range(1, nn):
                    blas.scal(0.0, Ut.blkval, offset=blkptr[k] + nj * i, n=i)

                if na > 0:                    blas.trmm(F, Ut.blkval, m = na, n = nn, transA = trns,\
                              offsetA = nj*nn+nn, ldA = nj,\
                              offsetB = blkptr[k]+nn, ldB = nj)
        else:  # inv is True
            for Ut in U:
                # symmetrize (1,1) block of Ut_{k} and scale
                U11 = matrix(0.0, (nn, nn))
                lapack.lacpy(Ut.blkval,
                             U11,
                             offsetA=blkptr[k],
                             m=nn,
                             n=nn,
                             ldA=nj,
                             uplo='L')
                U11 += U11.T
                U11[::nn + 1] *= 0.5
                lapack.lacpy(U11,
                             Ut.blkval,
                             offsetB=blkptr[k],
                             m=nn,
                             n=nn,
                             ldB=nj,
                             uplo='N')

                blas.trmm(L.blkval, Ut.blkval, side = 'R', transA = tr[0],\
                          m = nj, n = nn, offsetA = blkptr[k], ldA = nj,\
                          offsetB = blkptr[k], ldB = nj)
                blas.trmm(L.blkval, Ut.blkval, m = nn, n = nn, transA = tr[1],\
                          offsetA = blkptr[k], offsetB = blkptr[k],\
                          ldA = nj, ldB = nj)

                # zero-out strict upper triangular part of {Nj,Nj} block
                for i in range(1, nn):
                    blas.scal(0.0, Ut.blkval, offset=blkptr[k] + nj * i, n=i)

                if na > 0:                    blas.trsm(F, Ut.blkval, m = na, n = nn, transA = trns,\
                              offsetA = nj*nn+nn, ldA = nj,\
                              offsetB = blkptr[k]+nn, ldB = nj)

    return
コード例 #39
0
ファイル: robsvm.py プロジェクト: a85531506/research_project
    def F(W): 
        """
        Custom solver for the system

        [  It  0   0    Xt'     0     At1' ...  Atk' ][ dwt  ]   [ rwt ]
        [  0   0   0    -d'     0      0   ...   0   ][ db   ]   [ rb  ]
        [  0   0   0    -I     -I      0   ...   0   ][ dv   ]   [ rv  ]
        [  Xt -d  -I  -Wl1^-2                        ][ dzl1 ]   [ rl1 ]
        [  0   0  -I         -Wl2^-2                 ][ dzl2 ] = [ rl2 ]
        [ At1  0   0                -W1^-2           ][ dz1  ]   [ r1  ] 
        [  |   |   |                       .         ][  |   ]   [  |  ]
        [ Atk  0   0                          -Wk^-2 ][ dzk  ]   [ rk  ]

        where

        It = [ I 0 ]  Xt = [ -D*X E ]  Ati = [ 0   -e_i' ]  
             [ 0 0 ]                         [ -Pi   0   ] 

        dwt = [ dw ]  rwt = [ rw ]
              [ dt ]        [ rt ].

        """

        # scalings and 'intermediate' vectors
        # db = inv(Wl1)^2 + inv(Wl2)^2
        db = W['di'][:m]**2 + W['di'][m:2*m]**2
        dbi = div(1.0,db)
        
        # dt = I - inv(Wl1)*Dbi*inv(Wl1)
        dt = 1.0 - mul(W['di'][:m]**2,dbi)
        dtsqrt = sqrt(dt)

        # lam = Dt*inv(Wl1)*d
        lam = mul(dt,mul(W['di'][:m],d))

        # lt = E'*inv(Wl1)*lam
        lt = matrix(0.0,(k,1))
        base.gemv(E, mul(W['di'][:m],lam), lt, trans = 'T')

        # Xs = sqrt(Dt)*inv(Wl1)*X
        tmp = mul(dtsqrt,W['di'][:m])
        Xs = spmatrix(tmp,range(m),range(m))*X

        # Es = D*sqrt(Dt)*inv(Wl1)*E
        Es = spmatrix(mul(d,tmp),range(m),range(m))*E

        # form Ab = I + sum((1/bi)^2*(Pi'*Pi + 4*(v'*v + 1)*Pi'*y*y'*Pi)) + Xs'*Xs
        #  and Bb = -sum((1/bi)^2*(4*ui*v'*v*Pi'*y*ei')) - Xs'*Es
        #  and D2 = Es'*Es + sum((1/bi)^2*(1+4*ui^2*(v'*v - 1))
        Ab = matrix(0.0,(n,n))
        Ab[::n+1] = 1.0
        base.syrk(Xs,Ab,trans = 'T', beta = 1.0)
        Bb = matrix(0.0,(n,k))
        Bb = -Xs.T*Es # inefficient!?
        D2 = spmatrix(0.0,range(k),range(k))
        base.syrk(Es,D2,trans = 'T', partial = True)
        d2 = +D2.V
        del D2
        py = matrix(0.0,(n,1))
        for i in range(k):
            binvsq = (1.0/W['beta'][i])**2
            Ab += binvsq*Pt[i]
            dvv = blas.dot(W['v'][i],W['v'][i])
            blas.gemv(P[i], W['v'][i][1:], py, trans = 'T', alpha = 1.0, beta = 0.0)
            blas.syrk(py, Ab, alpha = 4*binvsq*(dvv+1), beta = 1.0)
            Bb[:,i] -= 4*binvsq*W['v'][i][0]*dvv*py
            d2[i] += binvsq*(1+4*(W['v'][i][0]**2)*(dvv-1))
        
        d2i = div(1.0,d2)
        d2isqrt = sqrt(d2i)

        # compute a = alpha - lam'*inv(Wl1)*E*inv(D2)*E'*inv(Wl1)*lam
        alpha = blas.dot(lam,mul(W['di'][:m],d))
        tmp = matrix(0.0,(k,1))
        base.gemv(E,mul(W['di'][:m],lam), tmp, trans = 'T')
        tmp = mul(tmp, d2isqrt) #tmp = inv(D2)^(1/2)*E'*inv(Wl1)*lam
        a = alpha - blas.dot(tmp,tmp)

        # compute M12 = X'*D*inv(Wl1)*lam + Bb*inv(D2)*E'*inv(Wl1)*lam
        tmp = mul(tmp, d2isqrt)
        M12 = matrix(0.0,(n,1))
        blas.gemv(Bb,tmp,M12, alpha = 1.0)
        tmp = mul(d,mul(W['di'][:m],lam))
        blas.gemv(X,tmp,M12, trans = 'T', alpha = 1.0, beta = 1.0)

        # form and factor M
        sBb = Bb * spmatrix(d2isqrt,range(k), range(k)) 
        base.syrk(sBb, Ab, alpha = -1.0, beta = 1.0)
        M = matrix([[Ab, M12.T],[M12, a]])
        lapack.potrf(M)
        
        def f(x,y,z):
            
            # residuals
            rwt = x[:n+k]
            rb = x[n+k]
            rv = x[n+k+1:n+k+1+m]
            iw_rl1 = mul(W['di'][:m],z[:m])
            iw_rl2 = mul(W['di'][m:2*m],z[m:2*m])
            ri = [z[2*m+i*(n+1):2*m+(i+1)*(n+1)] for i in range(k)]
            
            # compute 'derived' residuals 
            # rbwt = rwt + sum(Ai'*inv(Wi)^2*ri) + [-X'*D; E']*inv(Wl1)^2*rl1
            rbwt = +rwt
            for i in range(k):
                tmp = +ri[i]
                qscal(tmp,W['beta'][i],W['v'][i],inv=True)
                qscal(tmp,W['beta'][i],W['v'][i],inv=True)
                rbwt[n+i] -= tmp[0]
                blas.gemv(P[i], tmp[1:], rbwt, trans = 'T', alpha = -1.0, beta = 1.0)
            tmp = mul(W['di'][:m],iw_rl1)
            tmp2 = matrix(0.0,(k,1))
            base.gemv(E,tmp,tmp2,trans='T')
            rbwt[n:] += tmp2
            tmp = mul(d,tmp) # tmp = D*inv(Wl1)^2*rl1
            blas.gemv(X,tmp,rbwt,trans='T', alpha = -1.0, beta = 1.0)
            
            # rbb = rb - d'*inv(Wl1)^2*rl1
            rbb = rb - sum(tmp)

            # rbv = rv - inv(Wl2)*rl2 - inv(Wl1)^2*rl1
            rbv = rv - mul(W['di'][m:2*m],iw_rl2) - mul(W['di'][:m],iw_rl1) 
            
            # [rtw;rtt] = rbwt + [-X'*D; E']*inv(Wl1)^2*inv(Db)*rbv 
            tmp = mul(W['di'][:m]**2, mul(dbi,rbv))
            rtt = +rbwt[n:] 
            base.gemv(E, tmp, rtt, trans = 'T', alpha = 1.0, beta = 1.0)
            rtw = +rbwt[:n]
            tmp = mul(d,tmp)
            blas.gemv(X, tmp, rtw, trans = 'T', alpha = -1.0, beta = 1.0)

            # rtb = rbb - d'*inv(Wl1)^2*inv(Db)*rbv
            rtb = rbb - sum(tmp)
            
            # solve M*[dw;db] = [rtw - Bb*inv(D2)*rtt; rtb + lt'*inv(D2)*rtt]
            tmp = mul(d2i,rtt)
            tmp2 = matrix(0.0,(n,1))
            blas.gemv(Bb,tmp,tmp2)
            dwdb = matrix([rtw - tmp2,rtb + blas.dot(mul(d2i,lt),rtt)]) 
            lapack.potrs(M,dwdb)

            # compute dt = inv(D2)*(rtt - Bb'*dw + lt*db)
            tmp2 = matrix(0.0,(k,1))
            blas.gemv(Bb, dwdb[:n], tmp2, trans='T')
            dt = mul(d2i, rtt - tmp2 + lt*dwdb[-1])

            # compute dv = inv(Db)*(rbv + inv(Wl1)^2*(E*dt - D*X*dw - d*db))
            dv = matrix(0.0,(m,1))
            blas.gemv(X,dwdb[:n],dv,alpha = -1.0)
            dv = mul(d,dv) - d*dwdb[-1]
            base.gemv(E, dt, dv, beta = 1.0)
            tmp = +dv  # tmp = E*dt - D*X*dw - d*db
            dv = mul(dbi, rbv + mul(W['di'][:m]**2,dv))

            # compute wdz1 = inv(Wl1)*(E*dt - D*X*dw - d*db - dv - rl1)
            wdz1 = mul(W['di'][:m], tmp - dv) - iw_rl1

            # compute wdz2 = - inv(Wl2)*(dv + rl2)
            wdz2 = - mul(W['di'][m:2*m],dv) - iw_rl2

            # compute wdzi = inv(Wi)*([-ei'*dt; -Pi*dw] - ri)
            wdzi = []
            tmp = matrix(0.0,(n,1))
            for i in range(k):
                blas.gemv(P[i],dwdb[:n],tmp, alpha = -1.0, beta = 0.0) 
                tmp1 = matrix([-dt[i],tmp])
                blas.axpy(ri[i],tmp1,alpha = -1.0)
                qscal(tmp1,W['beta'][i],W['v'][i],inv=True)
                wdzi.append(tmp1)

            # solution
            x[:n] = dwdb[:n]
            x[n:n+k] = dt
            x[n+k] = dwdb[-1]
            x[n+k+1:] = dv
            z[:m] = wdz1 
            z[m:2*m] = wdz2
            for i in range(k):
                z[2*m+i*(n+1):2*m+(i+1)*(n+1)] = wdzi[i]

        return f
コード例 #40
0
def softmargin_appr(X,
                    d,
                    gamma,
                    width,
                    kernel='linear',
                    sigma=1.0,
                    degree=1,
                    theta=1.0,
                    Q=None):
    """
    Solves the approximate 'soft-margin' SVM problem

        maximize    -(1/2)*z'*Qc*z + d'*z
        subject to  0 <= diag(d)*z <= gamma*ones
                    sum(z) = 0

    (with variables z), and its dual problem

        minimize    (1/2)*y'*Qc^{-1}*y + gamma*sum(v)
        subject to  diag(d)*(y + b*ones) + v >= 1
                    v >= 0

    (with variables y, v, b).

    Qc is the maximum determinant completion of the projection of Q
    on a band with bandwidth 2*w+1.  Q_ij = K(xi, xj) where K is a kernel
    function and xi is the ith row of X (xi' = X[i,:]).

    Input arguments.

        X is an N x n matrix.

        d is an N-vector with elements -1 or 1; d[i] is the label of
        row X[i,:].

        gamma is a positive parameter.

        kernel is a string with values 'linear', 'rfb', 'poly', or 'tanh'.
        'linear': k(u,v) = u'*v/sigma.
        'rbf':    k(u,v) = exp(-||u - v||^2 / (2*sigma)).
        'poly':   k(u,v) = (u'*v/sigma)**degree.
        'tanh':   k(u,v) = tanh(u'*v/sigma - theta).

        sigma and theta are positive numbers.

        degree is a positive integer.

        width is a positive integer.

    Output.

        Returns a dictionary with the keys:

        'classifier'
           a Python function object that takes an M x n matrix with
           test vectors as rows and returns a vector with labels

        'completion classifier'
          a Python function object that takes an M x n matrix with
          test vectors as rows and returns a vector with labels

        'z'
           a sparse m-vector

        'cputime'
           a tuple (Ttot, Tqp, Tker) where Ttot is the total
           CPU time, Tqp is the CPU time spent solving the QP, and
           Tker is the CPU time spent computing the kernel matrix

        'iterations'
           the number of interior-point iteations

        'misclassified'
           a tuple (L1, L2) where L1 is a list of indices of
           misclassified training vectors from class 1, and L2 is a
           list of indices of misclassified training vectors from
           class 2
    """

    Tstart = cputime()

    if verbose: solvers.options['show_progress'] = True
    else: solvers.options['show_progress'] = False
    N, n = X.size

    if Q is None:
        Q, a = kernel_matrix(X,
                             kernel,
                             sigma=sigma,
                             degree=degree,
                             theta=theta,
                             V='band',
                             width=width)
    else:
        if not (Q.size[0] == N and Q.size[1] == N):
            raise ValueError("invalid kernel matrix dimensions")
        elif not type(Q) is cvxopt.base.spmatrix:
            raise ValueError("invalid kernel matrix type")
        elif verbose:
            print("using precomputed kernel matrix ..")
        if kernel == 'rbf':
            Ad = spmatrix(0.0, range(N), range(N))
            base.syrk(X, V, partial=True)
            a = Ad.V
            del Ad

    Tkernel = cputime(Tstart)

    # solve qp
    Tqp = cputime()
    y, b, v, z, optval, Lc, iters = softmargin_completion(
        Q, matrix(d, tc='d'), gamma)
    Tqp = cputime(Tqp)
    if verbose: print("utime = %f, stime = %f." % Tqp)

    # extract nonzero support vectors
    nrmz = max(abs(z))
    sv = [k for k in range(N) if abs(z[k]) > Tsv * nrmz]
    zs = spmatrix(z[sv], sv, [0 for i in range(len(sv))], (len(d), 1))
    if verbose: print("%d support vectors." % len(sv))
    Xr, zr, Nr = X[sv, :], z[sv], len(sv)

    # find misclassified training vectors
    err1 = [i for i in range(Q.size[0]) if (v[i] > 1 and d[i] == 1)]
    err2 = [i for i in range(Q.size[0]) if (v[i] > 1 and d[i] == -1)]
    if verbose:
        e1, n1 = len(err1), list(d).count(1)
        e2, n2 = len(err2), list(d).count(-1)
        print("class 1: %i/%i = %.1f%% misclassified." %
              (e1, n1, 100. * e1 / n1))
        print("class 2: %i/%i = %.1f%% misclassified." %
              (e2, n2, 100. * e2 / n2))
        del e1, e2, n1, n2

    # create classifier function object

    # CLASSIFIER 1 (standard kernel classifier)
    if kernel == 'linear':
        # w = X'*z / sigma
        w = matrix(0.0, (n, 1))
        blas.gemv(Xr, zr, w, trans='T', alpha=1.0 / sigma)

        def classifier(Y, soft=False):
            M = Y.size[0]
            x = matrix(b, (M, 1))
            blas.gemv(Y, w, x, beta=1.0)
            if soft: return x
            else: return matrix([2 * (xk > 0.0) - 1 for xk in x])

    elif kernel == 'rbf':

        def classifier(Y, soft=False):
            M = Y.size[0]
            # K = Y*X' / sigma
            K = matrix(0.0, (M, Nr))
            blas.gemm(Y, Xr, K, transB='T', alpha=1.0 / sigma)

            # c[i] = ||Yi||^2 / sigma
            ones = matrix(1.0, (max([M, Nr, n]), 1))
            c = Y**2 * ones[:n]
            blas.scal(1.0 / sigma, c)

            # Kij := Kij - 0.5 * (ci + aj)
            #      = || yi - xj ||^2 / (2*sigma)
            blas.ger(c, ones, K, alpha=-0.5)
            blas.ger(ones, a[sv], K, alpha=-0.5)
            x = exp(K) * zr + b
            if soft: return x
            else: return matrix([2 * (xk > 0.0) - 1 for xk in x])

    elif kernel == 'tanh':

        def classifier(Y, soft=False):
            M = Y.size[0]
            # K = Y*X' / sigma - theta
            K = matrix(theta, (M, Nr))
            blas.gemm(Y, Xr, K, transB='T', alpha=1.0 / sigma, beta=-1.0)

            K = exp(K)
            x = div(K - K**-1, K + K**-1) * zr + b
            if soft: return x
            else: return matrix([2 * (xk > 0.0) - 1 for xk in x])

    elif kernel == 'poly':

        def classifier(Y, soft=False):
            M = Y.size[0]
            # K = Y*X' / sigma
            K = matrix(0.0, (M, Nr))
            blas.gemm(Y, Xr, K, transB='T', alpha=1.0 / sigma)

            x = K**degree * zr + b
            if soft: return x
            else: return matrix([2 * (xk > 0.0) - 1 for xk in x])

    else:
        pass

    # CLASSIFIER 2 (completion kernel classifier)
    # TODO: generalize to arbitrary sparsity pattern
    L11 = matrix(Q[:width, :width])
    lapack.potrf(L11)

    if kernel == 'linear':

        def classifier2(Y, soft=False):
            M = Y.size[0]
            W = matrix(0., (width, M))
            blas.gemm(X, Y, W, transB='T', alpha=1.0 / sigma, m=width)
            lapack.potrs(L11, W)
            W = matrix([W, matrix(0., (N - width, M))])
            chompack.trsm(Lc, W, trans='N')
            chompack.trsm(Lc, W, trans='T')

            x = matrix(b, (M, 1))
            blas.gemv(W, z, x, trans='T', beta=1.0)
            if soft: return x
            else: return matrix([2 * (xk > 0.0) - 1 for xk in x])

    elif kernel == 'poly':

        def classifier2(Y, soft=False):
            if Y is None: return zs

            M = Y.size[0]
            W = matrix(0., (width, M))
            blas.gemm(X, Y, W, transB='T', alpha=1.0 / sigma, m=width)
            W = W**degree
            lapack.potrs(L11, W)
            W = matrix([W, matrix(0., (N - width, M))])
            chompack.trsm(Lc, W, trans='N')
            chompack.trsm(Lc, W, trans='T')

            x = matrix(b, (M, 1))
            blas.gemv(W, z, x, trans='T', beta=1.0)
            if soft: return x
            else: return matrix([2 * (xk > 0.0) - 1 for xk in x])

    elif kernel == 'rbf':

        def classifier2(Y, soft=False):

            M = Y.size[0]

            # K = Y*X' / sigma
            K = matrix(0.0, (width, M))
            blas.gemm(X, Y, K, transB='T', alpha=1.0 / sigma, m=width)

            # c[i] = ||Yi||^2 / sigma
            ones = matrix(1.0, (max(width, n, M), 1))
            c = Y**2 * ones[:n]
            blas.scal(1.0 / sigma, c)

            # Kij := Kij - 0.5 * (ci + aj)
            #      = || yi - xj ||^2 / (2*sigma)
            blas.ger(ones[:width], c, K, alpha=-0.5)
            blas.ger(a[:width], ones[:M], K, alpha=-0.5)
            # Kij = exp(Kij)
            K = exp(K)

            # complete K
            lapack.potrs(L11, K)
            K = matrix([K, matrix(0., (N - width, M))], (N, M))
            chompack.trsm(Lc, K, trans='N')
            chompack.trsm(Lc, K, trans='T')

            x = matrix(b, (M, 1))
            blas.gemv(K, z, x, trans='T', beta=1.0)

            if soft: return x
            else: return matrix([2 * (xk > 0.0) - 1 for xk in x])

    elif kernel == 'tanh':

        def classifier2(Y, soft=False):

            M = Y.size[0]

            # K = Y*X' / sigma
            K = matrix(theta, (width, M))
            blas.gemm(X,
                      Y,
                      K,
                      transB='T',
                      alpha=1.0 / sigma,
                      beta=-1.0,
                      m=width)

            K = exp(K)
            K = div(K - K**-1, K + K**-1)

            # complete K
            lapack.potrs(L11, K)
            K = matrix([K, matrix(0., (N - width, M))], (N, M))
            chompack.trsm(Lc, K, trans='N')
            chompack.trsm(Lc, K, trans='T')

            x = matrix(b, (M, 1))
            blas.gemv(K, z, x, trans='T', beta=1.0)

            if soft: return x
            else: return matrix([2 * (xk > 0.0) - 1 for xk in x])

    Ttotal = cputime(Tstart)

    return {
        'classifier': classifier,
        'completion classifier': classifier2,
        'cputime': (sum(Ttotal), sum(Tqp), sum(Tkernel)),
        'iterations': iters,
        'z': zs,
        'misclassified': (err1, err2)
    }
コード例 #41
0
 def computefunc(self,cinfo): 
     ainv=cinfo
     L = +cvxopt.matrix(ainv)
     lapack.potrf(L) 
     f=2.0*np.sum(np.log(np.diag(L))) 
     return f
コード例 #42
0
ファイル: solver.py プロジェクト: bpiwowar/kqp
def cholesky(A):
    """ Cholesky with clean-up """
    lapack.potrf(A)
    makeLT(A)
コード例 #43
0
    def Fkkt(W):

        # Returns a function f(x, y, z) that solves
        #
        #     [ 0   G'   ] [ x ] = [ bx ]
        #     [ G  -W'*W ] [ z ]   [ bz ].

        # First factor
        #
        #     S = G' * W**-1 * W**-T * G
        #       = [0; -A]' * W3^-2 * [0; -A] + 4 * (W1**2 + W2**2)**-1
        #
        # where
        #
        #     W1 = diag(d1) with d1 = W['d'][:n] = 1 ./ W['di'][:n]
        #     W2 = diag(d2) with d2 = W['d'][n:] = 1 ./ W['di'][n:]
        #     W3 = beta * (2*v*v' - J),  W3^-1 = 1/beta * (2*J*v*v'*J - J)
        #        with beta = W['beta'][0], v = W['v'][0], J = [1, 0; 0, -I].

        # As = W3^-1 * [ 0 ; -A ] = 1/beta * ( 2*J*v * v' - I ) * [0; A]
        beta, v = W['beta'][0], W['v'][0]
        As = 2 * v * (v[1:].T * A)
        As[1:, :] *= -1.0
        As[1:, :] -= A
        As /= beta

        # S = As'*As + 4 * (W1**2 + W2**2)**-1
        S = As.T * As
        d1, d2 = W['d'][:n], W['d'][n:]
        d = 4.0 * (d1**2 + d2**2)**-1
        S[::n + 1] += d
        lapack.potrf(S)

        def f(x, y, z):

            # z := - W**-T * z
            z[:n] = -div(z[:n], d1)
            z[n:2 * n] = -div(z[n:2 * n], d2)
            z[2 * n:] -= 2.0 * v * (v[0] * z[2 * n] -
                                    blas.dot(v[1:], z[2 * n + 1:]))
            z[2 * n + 1:] *= -1.0
            z[2 * n:] /= beta

            # x := x - G' * W**-1 * z
            x[:n] -= div(z[:n], d1) - div(z[n:2 * n], d2) + As.T * z[-(m + 1):]
            x[n:] += div(z[:n], d1) + div(z[n:2 * n], d2)

            # Solve for x[:n]:
            #
            #    S*x[:n] = x[:n] - (W1**2 - W2**2)(W1**2 + W2**2)^-1 * x[n:]

            x[:n] -= mul(div(d1**2 - d2**2, d1**2 + d2**2), x[n:])
            lapack.potrs(S, x)

            # Solve for x[n:]:
            #
            #    (d1**-2 + d2**-2) * x[n:] = x[n:] + (d1**-2 - d2**-2)*x[:n]

            x[n:] += mul(d1**-2 - d2**-2, x[:n])
            x[n:] = div(x[n:], d1**-2 + d2**-2)

            # z := z + W^-T * G*x
            z[:n] += div(x[:n] - x[n:2 * n], d1)
            z[n:2 * n] += div(-x[:n] - x[n:2 * n], d2)
            z[2 * n:] += As * x[:n]

        return f
コード例 #44
0
ファイル: robsvm.py プロジェクト: rubiruchi/sim_rel
    def F(W):
        """
        Custom solver for the system

        [  It  0   0    Xt'     0     At1' ...  Atk' ][ dwt  ]   [ rwt ]
        [  0   0   0    -d'     0      0   ...   0   ][ db   ]   [ rb  ]
        [  0   0   0    -I     -I      0   ...   0   ][ dv   ]   [ rv  ]
        [  Xt -d  -I  -Wl1^-2                        ][ dzl1 ]   [ rl1 ]
        [  0   0  -I         -Wl2^-2                 ][ dzl2 ] = [ rl2 ]
        [ At1  0   0                -W1^-2           ][ dz1  ]   [ r1  ] 
        [  |   |   |                       .         ][  |   ]   [  |  ]
        [ Atk  0   0                          -Wk^-2 ][ dzk  ]   [ rk  ]

        where

        It = [ I 0 ]  Xt = [ -D*X E ]  Ati = [ 0   -e_i' ]  
             [ 0 0 ]                         [ -Pi   0   ] 

        dwt = [ dw ]  rwt = [ rw ]
              [ dt ]        [ rt ].

        """

        # scalings and 'intermediate' vectors
        # db = inv(Wl1)^2 + inv(Wl2)^2
        db = W['di'][:m]**2 + W['di'][m:2 * m]**2
        dbi = div(1.0, db)

        # dt = I - inv(Wl1)*Dbi*inv(Wl1)
        dt = 1.0 - mul(W['di'][:m]**2, dbi)
        dtsqrt = sqrt(dt)

        # lam = Dt*inv(Wl1)*d
        lam = mul(dt, mul(W['di'][:m], d))

        # lt = E'*inv(Wl1)*lam
        lt = matrix(0.0, (k, 1))
        base.gemv(E, mul(W['di'][:m], lam), lt, trans='T')

        # Xs = sqrt(Dt)*inv(Wl1)*X
        tmp = mul(dtsqrt, W['di'][:m])
        Xs = spmatrix(tmp, range(m), range(m)) * X

        # Es = D*sqrt(Dt)*inv(Wl1)*E
        Es = spmatrix(mul(d, tmp), range(m), range(m)) * E

        # form Ab = I + sum((1/bi)^2*(Pi'*Pi + 4*(v'*v + 1)*Pi'*y*y'*Pi)) + Xs'*Xs
        #  and Bb = -sum((1/bi)^2*(4*ui*v'*v*Pi'*y*ei')) - Xs'*Es
        #  and D2 = Es'*Es + sum((1/bi)^2*(1+4*ui^2*(v'*v - 1))
        Ab = matrix(0.0, (n, n))
        Ab[::n + 1] = 1.0
        base.syrk(Xs, Ab, trans='T', beta=1.0)
        Bb = matrix(0.0, (n, k))
        Bb = -Xs.T * Es  # inefficient!?
        D2 = spmatrix(0.0, range(k), range(k))
        base.syrk(Es, D2, trans='T', partial=True)
        d2 = +D2.V
        del D2
        py = matrix(0.0, (n, 1))
        for i in range(k):
            binvsq = (1.0 / W['beta'][i])**2
            Ab += binvsq * Pt[i]
            dvv = blas.dot(W['v'][i], W['v'][i])
            blas.gemv(P[i], W['v'][i][1:], py, trans='T', alpha=1.0, beta=0.0)
            blas.syrk(py, Ab, alpha=4 * binvsq * (dvv + 1), beta=1.0)
            Bb[:, i] -= 4 * binvsq * W['v'][i][0] * dvv * py
            d2[i] += binvsq * (1 + 4 * (W['v'][i][0]**2) * (dvv - 1))

        d2i = div(1.0, d2)
        d2isqrt = sqrt(d2i)

        # compute a = alpha - lam'*inv(Wl1)*E*inv(D2)*E'*inv(Wl1)*lam
        alpha = blas.dot(lam, mul(W['di'][:m], d))
        tmp = matrix(0.0, (k, 1))
        base.gemv(E, mul(W['di'][:m], lam), tmp, trans='T')
        tmp = mul(tmp, d2isqrt)  #tmp = inv(D2)^(1/2)*E'*inv(Wl1)*lam
        a = alpha - blas.dot(tmp, tmp)

        # compute M12 = X'*D*inv(Wl1)*lam + Bb*inv(D2)*E'*inv(Wl1)*lam
        tmp = mul(tmp, d2isqrt)
        M12 = matrix(0.0, (n, 1))
        blas.gemv(Bb, tmp, M12, alpha=1.0)
        tmp = mul(d, mul(W['di'][:m], lam))
        blas.gemv(X, tmp, M12, trans='T', alpha=1.0, beta=1.0)

        # form and factor M
        sBb = Bb * spmatrix(d2isqrt, range(k), range(k))
        base.syrk(sBb, Ab, alpha=-1.0, beta=1.0)
        M = matrix([[Ab, M12.T], [M12, a]])
        lapack.potrf(M)

        def f(x, y, z):

            # residuals
            rwt = x[:n + k]
            rb = x[n + k]
            rv = x[n + k + 1:n + k + 1 + m]
            iw_rl1 = mul(W['di'][:m], z[:m])
            iw_rl2 = mul(W['di'][m:2 * m], z[m:2 * m])
            ri = [
                z[2 * m + i * (n + 1):2 * m + (i + 1) * (n + 1)]
                for i in range(k)
            ]

            # compute 'derived' residuals
            # rbwt = rwt + sum(Ai'*inv(Wi)^2*ri) + [-X'*D; E']*inv(Wl1)^2*rl1
            rbwt = +rwt
            for i in range(k):
                tmp = +ri[i]
                qscal(tmp, W['beta'][i], W['v'][i], inv=True)
                qscal(tmp, W['beta'][i], W['v'][i], inv=True)
                rbwt[n + i] -= tmp[0]
                blas.gemv(P[i], tmp[1:], rbwt, trans='T', alpha=-1.0, beta=1.0)
            tmp = mul(W['di'][:m], iw_rl1)
            tmp2 = matrix(0.0, (k, 1))
            base.gemv(E, tmp, tmp2, trans='T')
            rbwt[n:] += tmp2
            tmp = mul(d, tmp)  # tmp = D*inv(Wl1)^2*rl1
            blas.gemv(X, tmp, rbwt, trans='T', alpha=-1.0, beta=1.0)

            # rbb = rb - d'*inv(Wl1)^2*rl1
            rbb = rb - sum(tmp)

            # rbv = rv - inv(Wl2)*rl2 - inv(Wl1)^2*rl1
            rbv = rv - mul(W['di'][m:2 * m], iw_rl2) - mul(W['di'][:m], iw_rl1)

            # [rtw;rtt] = rbwt + [-X'*D; E']*inv(Wl1)^2*inv(Db)*rbv
            tmp = mul(W['di'][:m]**2, mul(dbi, rbv))
            rtt = +rbwt[n:]
            base.gemv(E, tmp, rtt, trans='T', alpha=1.0, beta=1.0)
            rtw = +rbwt[:n]
            tmp = mul(d, tmp)
            blas.gemv(X, tmp, rtw, trans='T', alpha=-1.0, beta=1.0)

            # rtb = rbb - d'*inv(Wl1)^2*inv(Db)*rbv
            rtb = rbb - sum(tmp)

            # solve M*[dw;db] = [rtw - Bb*inv(D2)*rtt; rtb + lt'*inv(D2)*rtt]
            tmp = mul(d2i, rtt)
            tmp2 = matrix(0.0, (n, 1))
            blas.gemv(Bb, tmp, tmp2)
            dwdb = matrix([rtw - tmp2, rtb + blas.dot(mul(d2i, lt), rtt)])
            lapack.potrs(M, dwdb)

            # compute dt = inv(D2)*(rtt - Bb'*dw + lt*db)
            tmp2 = matrix(0.0, (k, 1))
            blas.gemv(Bb, dwdb[:n], tmp2, trans='T')
            dt = mul(d2i, rtt - tmp2 + lt * dwdb[-1])

            # compute dv = inv(Db)*(rbv + inv(Wl1)^2*(E*dt - D*X*dw - d*db))
            dv = matrix(0.0, (m, 1))
            blas.gemv(X, dwdb[:n], dv, alpha=-1.0)
            dv = mul(d, dv) - d * dwdb[-1]
            base.gemv(E, dt, dv, beta=1.0)
            tmp = +dv  # tmp = E*dt - D*X*dw - d*db
            dv = mul(dbi, rbv + mul(W['di'][:m]**2, dv))

            # compute wdz1 = inv(Wl1)*(E*dt - D*X*dw - d*db - dv - rl1)
            wdz1 = mul(W['di'][:m], tmp - dv) - iw_rl1

            # compute wdz2 = - inv(Wl2)*(dv + rl2)
            wdz2 = -mul(W['di'][m:2 * m], dv) - iw_rl2

            # compute wdzi = inv(Wi)*([-ei'*dt; -Pi*dw] - ri)
            wdzi = []
            tmp = matrix(0.0, (n, 1))
            for i in range(k):
                blas.gemv(P[i], dwdb[:n], tmp, alpha=-1.0, beta=0.0)
                tmp1 = matrix([-dt[i], tmp])
                blas.axpy(ri[i], tmp1, alpha=-1.0)
                qscal(tmp1, W['beta'][i], W['v'][i], inv=True)
                wdzi.append(tmp1)

            # solution
            x[:n] = dwdb[:n]
            x[n:n + k] = dt
            x[n + k] = dwdb[-1]
            x[n + k + 1:] = dv
            z[:m] = wdz1
            z[m:2 * m] = wdz2
            for i in range(k):
                z[2 * m + i * (n + 1):2 * m + (i + 1) * (n + 1)] = wdzi[i]

        return f
コード例 #45
0
ファイル: psdcompletion.py プロジェクト: cvxopt/chompack
def psdcompletion(A, reordered = True, **kwargs):
    """
    Maximum determinant positive semidefinite matrix completion. The
    routine takes a cspmatrix :math:`A` and returns the maximum determinant
    positive semidefinite matrix completion :math:`X` as a dense matrix, i.e.,

    .. math::
         P( X ) = A

    :param A:                 :py:class:`cspmatrix`
    :param reordered:         boolean
    """
    assert isinstance(A, cspmatrix) and A.is_factor is False, "A must be a cspmatrix"
    
    tol = kwargs.get('tol',1e-15)
    X = matrix(A.spmatrix(reordered = True, symmetric = True))

    symb = A.symb
    n = symb.n
    snptr = symb.snptr
    sncolptr = symb.sncolptr
    snrowidx = symb.snrowidx

    # visit supernodes in reverse (descending) order
    for k in range(symb.Nsn-1,-1,-1):

        nn = snptr[k+1]-snptr[k]
        beta = snrowidx[sncolptr[k]:sncolptr[k+1]]
        nj = len(beta)
        if nj-nn == 0: continue
        alpha = beta[nn:]
        nu = beta[:nn]
        eta = matrix([matrix(range(beta[kk]+1,beta[kk+1])) for kk in range(nj-1)] + [matrix(range(beta[-1]+1,n))])

        try:
            # Try Cholesky factorization first
            Xaa = X[alpha,alpha]
            lapack.potrf(Xaa)
            Xan = X[alpha,nu]
            lapack.trtrs(Xaa, Xan, trans = 'N')
            XeaT = X[eta,alpha].T
            lapack.trtrs(Xaa, XeaT, trans = 'N')

            # Compute update
            tmp = XeaT.T*Xan
            
        except:
            # If Cholesky fact. fails, switch to EVD: Xaa = Z*diag(w)*Z.T
            Xaa = X[alpha,alpha]
            w = matrix(0.0,(Xaa.size[0],1))
            Z = matrix(0.0,Xaa.size)
            lapack.syevr(Xaa, w, jobz='V', range='A', uplo='L', Z=Z)

            # Pseudo-inverse: Xp = pinv(Xaa)
            lambda_max = max(w)
            Xp = Z*spmatrix([1.0/wi if wi > lambda_max*tol else 0.0 for wi in w],range(len(w)),range(len(w)))*Z.T
                    
            # Compute update
            tmp = X[eta,alpha]*Xp*X[alpha,nu]

        X[eta,nu] = tmp
        X[nu,eta] = tmp.T

    if reordered:
        return X
    else:
        return X[symb.ip,symb.ip]
コード例 #46
0
ファイル: ellipsoids.py プロジェクト: AlbertHolmes/cvxopt
def F(x=None, z=None):
    if x is None:  
        return m, matrix([ 1.0, 0.0, 1.0, 0.0, 0.0 ])

    # Factor A as A = L*L'.  Compute inverse B = A^-1.
    A = matrix( [x[0], x[1], x[1], x[2]], (2,2))
    L = +A
    try: lapack.potrf(L)
    except: return None
    B = +L
    lapack.potri(B)
    B[0,1] = B[1,0]

    # f0 = -log det A    
    f = matrix(0.0, (m+1,1))
    f[0] = -2.0 * (log(L[0,0]) + log(L[1,1]))

    # fk = xk'*A*xk - 2*xk'*b + b*A^-1*b - 1 
    #    = (xk - c)' * A * (xk - c) - 1  where c = A^-1*b  
    c = x[3:]
    lapack.potrs(L, c)  
    for k in range(m):
        f[k+1] = (X[k,:].T - c).T * A * (X[k,:].T - c) - 1.0 

    # gradf0 = (-A^-1, 0) = (-B, 0)
    Df = matrix(0.0, (m+1,5))
    Df[0,0], Df[0,1], Df[0,2] = -B[0,0], -2.0*B[1,0], -B[1,1]

    # gradfk = (xk*xk' - A^-1*b*b'*A^-1,  2*(-xk + A^-1*b))
    #        = (xk*xk' - c*c', 2*(-xk+c))
    Df[1:,0] = X[:m,0]**2 - c[0]**2
    Df[1:,1] = 2.0 * (mul(X[:m,0], X[:m,1]) - c[0]*c[1])
    Df[1:,2] = X[:m,1]**2 - c[1]**2
    Df[1:,3] = 2.0 * (-X[:m,0] + c[0])
    Df[1:,4] = 2.0 * (-X[:m,1] + c[1])

    if z is None: return f, Df
    
    # hessf0(Y, y) = (A^-1*Y*A^-1, 0) = (B*YB, 0)
    H0 = matrix(0.0, (5,5))
    H0[0,0] = B[0,0]**2
    H0[1,0] = 2.0 * B[0,0] * B[1,0]
    H0[2,0] = B[1,0]**2
    H0[1,1] = 2.0 * ( B[0,0] * B[1,1] + B[1,0]**2 )
    H0[2,1] = 2.0 * B[1,0] * B[1,1]
    H0[2,2] = B[1,1]**2
 
    # hessfi(Y, y) 
    #     = ( A^-1*Y*A^-1*b*b'*A^-1 + A^-1*b*b'*A^-1*Y*A^-1 
    #             - A^-1*y*b'*A^-1 - A^-1*b*y'*A^-1, 
    #         -2*A^-1*Y*A^-1*b + 2*A^-1*y ) 
    #     = ( B*Y*c*c' + c*c'*Y*B - B*y*c' - c*y'*B,  -2*B*Y*c + 2*B*y )
    #     = ( B*(Y*c-y)*c' + c*(Y*c-y)'*B, -2*B*(Y*c - y) ) 
    H1 = matrix(0.0, (5,5))
    H1[0,0] = 2.0 * c[0]**2 * B[0,0] 
    H1[1,0] = 2.0 * ( c[0] * c[1] * B[0,0] + c[0]**2 * B[1,0] )
    H1[2,0] = 2.0 * c[0] * c[1] * B[1,0] 
    H1[3:,0] = -2.0 * c[0] * B[:,0] 
    H1[1,1] = 2.0 * c[0]**2 * B[1,1] + 4.0 * c[0]*c[1]*B[1,0]  + \
              2.0 * c[1]**2 + B[0,0]
    H1[2,1] = 2.0 * (c[1]**2 * B[1,0] + c[0]*c[1]*B[1,1])
    H1[3:,1] = -2.0 * B * c[[1,0]]
    H1[2,2] = 2.0 * c[1]**2 * B[1,1]
    H1[3:,2] = -2.0 * c[1] * B[:,1] 
    H1[3:,3:] = 2*B

    return f, Df, z[0]*H0 + sum(z[1:])*H1
コード例 #47
0
ファイル: sample3.py プロジェクト: tungk/PyOptSamples
    def factor(W, H=None, Df=None):

        if F['firstcall']:
            if type(G) is matrix:
                F['Gs'] = matrix(0.0, G.size)
            else:
                F['Gs'] = spmatrix(0.0, G.I, G.J, G.size)
            if mnl:
                if type(Df) is matrix:
                    F['Dfs'] = matrix(0.0, Df.size)
                else:
                    F['Dfs'] = spmatrix(0.0, Df.I, Df.J, Df.size)
            if (mnl and type(Df) is matrix) or type(G) is matrix or \
                    type(H) is matrix:
                F['S'] = matrix(0.0, (n, n))
                F['K'] = matrix(0.0, (p, p))
            else:
                F['S'] = spmatrix([], [], [], (n, n), 'd')
                F['Sf'] = None
                if type(A) is matrix:
                    F['K'] = matrix(0.0, (p, p))
                else:
                    F['K'] = spmatrix([], [], [], (p, p), 'd')

        # Dfs = Wnl^{-1} * Df
        if mnl:
            base.gemm(spmatrix(W['dnli'], list(range(mnl)),
                               list(range(mnl))), Df, F['Dfs'], partial=True)

        # Gs = Wl^{-1} * G.
        base.gemm(spmatrix(W['di'], list(range(ml)), list(range(ml))),
                  G, F['Gs'], partial=True)

        if F['firstcall']:
            base.syrk(F['Gs'], F['S'], trans='T')
            if mnl:
                base.syrk(F['Dfs'], F['S'], trans='T', beta=1.0)
            if H is not None:
                F['S'] += H
            try:
                if type(F['S']) is matrix:
                    lapack.potrf(F['S'])
                else:
                    F['Sf'] = cholmod.symbolic(F['S'])
                    cholmod.numeric(F['S'], F['Sf'])
            except ArithmeticError:
                F['singular'] = True
                if type(A) is matrix and type(F['S']) is spmatrix:
                    F['S'] = matrix(0.0, (n, n))
                base.syrk(F['Gs'], F['S'], trans='T')
                if mnl:
                    base.syrk(F['Dfs'], F['S'], trans='T', beta=1.0)
                base.syrk(A, F['S'], trans='T', beta=1.0)
                if H is not None:
                    F['S'] += H
                if type(F['S']) is matrix:
                    lapack.potrf(F['S'])
                else:
                    F['Sf'] = cholmod.symbolic(F['S'])
                    cholmod.numeric(F['S'], F['Sf'])
            F['firstcall'] = False

        else:
            base.syrk(F['Gs'], F['S'], trans='T', partial=True)
            if mnl:
                base.syrk(F['Dfs'], F['S'], trans='T', beta=1.0,
                          partial=True)
            if H is not None:
                F['S'] += H
            if F['singular']:
                base.syrk(A, F['S'], trans='T', beta=1.0, partial=True)
            if type(F['S']) is matrix:
                lapack.potrf(F['S'])
            else:
                cholmod.numeric(F['S'], F['Sf'])

        if type(F['S']) is matrix:
            # Asct := L^{-1}*A'.  Factor K = Asct'*Asct.
            if type(A) is matrix:
                Asct = A.T
            else:
                Asct = matrix(A.T)
            blas.trsm(F['S'], Asct)
            blas.syrk(Asct, F['K'], trans='T')
            lapack.potrf(F['K'])

        else:
            # Asct := L^{-1}*P*A'.  Factor K = Asct'*Asct.
            if type(A) is matrix:
                Asct = A.T
                cholmod.solve(F['Sf'], Asct, sys=7)
                cholmod.solve(F['Sf'], Asct, sys=4)
                blas.syrk(Asct, F['K'], trans='T')
                lapack.potrf(F['K'])
            else:
                Asct = cholmod.spsolve(F['Sf'], A.T, sys=7)
                Asct = cholmod.spsolve(F['Sf'], Asct, sys=4)
                base.syrk(Asct, F['K'], trans='T')
                Kf = cholmod.symbolic(F['K'])
                cholmod.numeric(F['K'], Kf)

        def solve(x, y, z):

            # Solve
            #
            #     [ H          A'  GG'*W^{-1} ]   [ ux   ]   [ bx        ]
            #     [ A          0   0          ] * [ uy   ] = [ by        ]
            #     [ W^{-T}*GG  0   -I         ]   [ W*uz ]   [ W^{-T}*bz ]
            #
            # and return ux, uy, W*uz.
            #
            # If not F['singular']:
            #
            #     K*uy = A * S^{-1} * ( bx + GG'*W^{-1}*W^{-T}*bz ) - by
            #     S*ux = bx + GG'*W^{-1}*W^{-T}*bz - A'*uy
            #     W*uz = W^{-T} * ( GG*ux - bz ).
            #
            # If F['singular']:
            #
            #     K*uy = A * S^{-1} * ( bx + GG'*W^{-1}*W^{-T}*bz + A'*by )
            #            - by
            #     S*ux = bx + GG'*W^{-1}*W^{-T}*bz + A'*by - A'*y.
            #     W*uz = W^{-T} * ( GG*ux - bz ).

            # z := W^{-1} * z = W^{-1} * bz
            scale(z, W, trans='T', inverse='I')

            # If not F['singular']:
            #     x := L^{-1} * P * (x + GGs'*z)
            #        = L^{-1} * P * (x + GG'*W^{-1}*W^{-T}*bz)
            #
            # If F['singular']:
            #     x := L^{-1} * P * (x + GGs'*z + A'*y))
            #        = L^{-1} * P * (x + GG'*W^{-1}*W^{-T}*bz + A'*y)

            if mnl:
                base.gemv(F['Dfs'], z, x, trans='T', beta=1.0)
            base.gemv(F['Gs'], z, x, offsetx=mnl, trans='T',
                      beta=1.0)
            if F['singular']:
                base.gemv(A, y, x, trans='T', beta=1.0)
            if type(F['S']) is matrix:
                blas.trsv(F['S'], x)
            else:
                cholmod.solve(F['Sf'], x, sys=7)
                cholmod.solve(F['Sf'], x, sys=4)

            # y := K^{-1} * (Asc*x - y)
            #    = K^{-1} * (A * S^{-1} * (bx + GG'*W^{-1}*W^{-T}*bz) - by)
            #      (if not F['singular'])
            #    = K^{-1} * (A * S^{-1} * (bx + GG'*W^{-1}*W^{-T}*bz +
            #      A'*by) - by)
            #      (if F['singular']).

            base.gemv(Asct, x, y, trans='T', beta=-1.0)
            if type(F['K']) is matrix:
                lapack.potrs(F['K'], y)
            else:
                cholmod.solve(Kf, y)

            # x := P' * L^{-T} * (x - Asc'*y)
            #    = S^{-1} * (bx + GG'*W^{-1}*W^{-T}*bz - A'*y)
            #      (if not F['singular'])
            #    = S^{-1} * (bx + GG'*W^{-1}*W^{-T}*bz + A'*by - A'*y)
            #      (if F['singular'])

            base.gemv(Asct, y, x, alpha=-1.0, beta=1.0)
            if type(F['S']) is matrix:
                blas.trsv(F['S'], x, trans='T')
            else:
                cholmod.solve(F['Sf'], x, sys=5)
                cholmod.solve(F['Sf'], x, sys=8)

            # W*z := GGs*x - z = W^{-T} * (GG*x - bz)
            if mnl:
                base.gemv(F['Dfs'], x, z, beta=-1.0)
            base.gemv(F['Gs'], x, z, beta=-1.0, offsety=mnl)

        return solve