Example #1
0
def bounds(Xs, Ys, ns=100):
    #use a gp to infer mean and bounds on sets of x/y data that have diffent x
    #f,a = plt.subplots(2)
    #for i in xrange(len(Ys)):
    #    a[0].plot(Xs[i],Ys[i])

    X = sp.hstack(Xs)
    np = X.size
    Y = sp.hstack(Ys)
    X.resize([np, 1])
    Y.resize([np, 1])
    #a[1].plot(X,Y,'r.')
    np = X.size
    S = sp.zeros(np)
    D = [[sp.NaN]] * np
    ki = GPdc.MAT52CS
    mprior = sp.array([1., 2., 1.])
    sprior = sp.array([2., 2., 2.])
    #MAPH = GPdc.searchMAPhyp(X,Y,S,D,mprior,sprior, ki,mx=500)
    MAPH = sp.array([0.5, 5., 0.3])
    g = GPdc.GPcore(X, Y, S, D, GPdc.kernel(ki, 1, MAPH))
    sup = sp.linspace(min(X), max(X), ns)
    [m, V] = g.infer_diag_post(sup, [[sp.NaN]] * ns)
    std = sp.sqrt(V + MAPH[2])
    #plt.fill_between(sup.flatten(),(m-std).flatten(),(m+std).flatten(),facecolor='lightblue',edgecolor='lightblue',alpha=0.5)
    #a[1].plot(sup,m.flatten(),'b')
    return [sup, m, std]
Example #2
0
def EIMAPaq(optstate,persist,ev=None, ub = None, lb=None, nrandinit=None, mprior=None,sprior=None,kindex = None,directmaxiter=None):
    para = copy.deepcopy(para)
    if persist==None:
        persist = {'n':0,'d':len(ub)}
    n = persist['n']
    d = persist['d']
    if n<nrandinit:
        persist['n']+=1
        return randomaq(optstate,persist,ev=ev,lb=lb,ub=ub)
    logger.info('EIMAPaq')
    #logger.debug(sp.vstack([e[0] for e in optstate.ev]))
    #raise
    x=sp.vstack(optstate.x)
    y=sp.vstack(optstate.y)
    s= sp.vstack([e['s'] for e in optstate.ev])
    dx=[e['d'] for e in optstate.ev]
    MAP = GPdc.searchMAPhyp(x,y,s,dx,mprior,sprior, kindex)
    logger.info('MAPHYP {}'.format(MAP))

    G = GPdc.GPcore(x,y,s,dx,GPdc.kernel(kindex,d,MAP))
    def directwrap(xq,y):
        xq.resize([1,d])
        a = G.infer_lEI(xq,[ev['d']])
        return (-a[0,0],0)
    
    [xmin,ymin,ierror] = DIRECT.solve(directwrap,lb,ub,user_data=[], algmethod=0, maxf = directmaxiter, logfilename='/dev/null')
    #logger.debug([xmin,ymin,ierror])
    persist['n']+=1
    return [i for i in xmin],ev,persist,{'MAPHYP':MAP,'logEImin':ymin,'DIRECTmessage':ierror}
Example #3
0
def gensquexpdraw(d, lb, ub, ignores=-1):
    nt = 14
    [X, Y, S, D] = ESutils.gen_dataset(nt, d, lb, ub, GPdc.SQUEXP,
                                       sp.array([1.5] + [0.30] * d))
    G = GPdc.GPcore(X, Y, S, D,
                    GPdc.kernel(GPdc.SQUEXP, d, sp.array([1.5] + [0.30] * d)))

    def obj(x, s, d, override=False):
        #print [x,s,d]
        if ignores > 0:
            s = ignores
        if s == 0. or override:
            noise = 0.
        else:
            noise = sp.random.normal(scale=sp.sqrt(s))
        print "EVAL WITH NOISE: " + str(noise) + "FROM S= " + str(s)
        return [G.infer_m(x, [d])[0, 0] + noise, 1.]

    def dirwrap(x, y):
        z = G.infer_m(x, [[sp.NaN]])[0, 0]
        #z = obj(x,0.,[sp.NaN])
        return (z, 0)

    [xmin, ymin, ierror] = DIRECT.solve(dirwrap,
                                        lb,
                                        ub,
                                        user_data=[],
                                        algmethod=1,
                                        maxf=89000,
                                        logfilename='/dev/null')

    return [obj, xmin, ymin]
Example #4
0
def genmat52ojf(d, lb, ub):
    from ESutils import gen_dataset
    nt = 14
    [X, Y, S, D] = gen_dataset(nt, d, lb, ub, GPdc.MAT52,
                               sp.array([1.5] + [0.55] * d))
    G = GPdc.GPcore(X, Y, S, D,
                    GPdc.kernel(GPdc.MAT52, d, sp.array([1.5] + [0.55] * d)))

    def ojf(x, **ev):
        dx = ev['d']
        s = ev['s']
        if ev['s'] > 0:
            noise = sp.random.normal(scale=sp.sqrt(ev['s']))
        else:
            noise = 0
        return G.infer_m(sp.array(x), [dx])[0, 0] + noise, 1., dict()

    def dirwrap(x, y):
        z = G.infer_m(x, [[sp.NaN]])[0, 0]
        #z = obj(x,0.,[sp.NaN])
        return (z, 0)

    [xmin, ymin, ierror] = DIRECT.solve(dirwrap,
                                        lb,
                                        ub,
                                        user_data=[],
                                        algmethod=1,
                                        maxf=89000,
                                        logfilename='/dev/null')
    logger.info('generated function xmin {} ymin {} {}'.format(
        xmin, ymin, ierror))

    return ojf, xmin, ymin
Example #5
0
def gpmapasrecc(optstate, **para):
    if para["onlyafter"] > len(optstate.y) or not len(optstate.y) % para["everyn"] == 0:
        return [sp.NaN for i in para["lb"]], {"didnotrun": True}
    logger.info("gpmapas reccomender")
    d = len(para["lb"])

    x = sp.hstack([sp.vstack(optstate.x), sp.vstack([e["xa"] for e in optstate.ev])])

    y = sp.vstack(optstate.y)
    s = sp.vstack([e["s"] for e in optstate.ev])
    dx = [e["d"] for e in optstate.ev]
    MAP = GPdc.searchMAPhyp(x, y, s, dx, para["mprior"], para["sprior"], para["kindex"])
    logger.info("MAPHYP {}".format(MAP))
    G = GPdc.GPcore(x, y, s, dx, GPdc.kernel(para["kindex"], d + 1, MAP))

    def directwrap(xq, y):
        xq.resize([1, d])
        xe = sp.hstack([xq, sp.array([[0.0]])])
        # print xe
        a = G.infer_m(xe, [[sp.NaN]])
        return (a[0, 0], 0)

    [xmin, ymin, ierror] = DIRECT.solve(
        directwrap, para["lb"], para["ub"], user_data=[], algmethod=1, volper=para["volper"], logfilename="/dev/null"
    )
    logger.info("reccsearchresult: {}".format([xmin, ymin, ierror]))
    return [i for i in xmin], {"MAPHYP": MAP, "ymin": ymin}
Example #6
0
def gpmapasrecc(optstate, **para):
    if para['onlyafter'] > len(
            optstate.y) or not len(optstate.y) % para['everyn'] == 0:
        return [sp.NaN for i in para['lb']], {'didnotrun': True}
    logger.info('gpmapas reccomender')
    d = len(para['lb'])

    x = sp.hstack(
        [sp.vstack(optstate.x),
         sp.vstack([e['xa'] for e in optstate.ev])])

    y = sp.vstack(optstate.y)
    s = sp.vstack([e['s'] for e in optstate.ev])
    dx = [e['d'] for e in optstate.ev]
    MAP = GPdc.searchMAPhyp(x, y, s, dx, para['mprior'], para['sprior'],
                            para['kindex'])
    logger.info('MAPHYP {}'.format(MAP))
    G = GPdc.GPcore(x, y, s, dx, GPdc.kernel(para['kindex'], d + 1, MAP))

    def directwrap(xq, y):
        xq.resize([1, d])
        xe = sp.hstack([xq, sp.array([[0.]])])
        #print xe
        a = G.infer_m(xe, [[sp.NaN]])
        return (a[0, 0], 0)

    [xmin, ymin, ierror] = DIRECT.solve(directwrap,
                                        para['lb'],
                                        para['ub'],
                                        user_data=[],
                                        algmethod=1,
                                        volper=para['volper'],
                                        logfilename='/dev/null')
    logger.info('reccsearchresult: {}'.format([xmin, ymin, ierror]))
    return [i for i in xmin], {'MAPHYP': MAP, 'ymin': ymin}
Example #7
0
def ojf(x, s, d, override=False):
    #print "called ojf: "+str(x)
    try:
        x = x.flatten(0)
    except:
        pass

    xlow = [-2., -2.]
    xupp = [2., 2.]

    xthis = [
        xlow[i] + 0.5 * (xin + 1) * (xupp[i] - xlow[i])
        for i, xin in enumerate(x)
    ]
    hyp = [10**i for i in xthis]

    print hyp
    t0 = time.clock()
    llk = sp.clip(
        GPdc.GP_LKonly(X, Y, S, D, GPdc.kernel(GPdc.MAT52, 1,
                                               sp.array(hyp))).plk(pm, ps),
        -1e60, 1e60)

    t1 = time.clock()
    if llk < -1.:
        out = sp.log(-llk) + 1.
    else:
        out = -llk
    print "--->llk: {0} {1}    t: {2}".format(llk, out, t1 - t0)

    return [out, t1 - t0]
Example #8
0
    def run_search(self):

        MAP = GPdc.searchMAPhyp(self.X, self.Y, self.S, self.D, self.mprior,
                                self.sprior, self.kindex)
        try:
            del (self.G)
        except:
            pass
        self.G = GPdc.GPcore(self.X, self.Y, self.S, self.D,
                             GPdc.kernel(self.kindex, self.d, MAP))

        def directwrap(x, y):
            x.resize([1, self.d])

            a = self.G.infer_lEI(x, [[sp.NaN]])
            #print [x,a]
            #print G.infer_diag_post(x,[[sp.NaN]])
            return (-a[0, 0], 0)

        [xmin, ymin, ierror] = DIRECT.solve(directwrap,
                                            self.lb,
                                            self.ub,
                                            user_data=[],
                                            algmethod=1,
                                            volper=self.volper,
                                            logfilename='/dev/null')

        return [xmin, self.s, [sp.NaN]]
Example #9
0
def makeG(X,Y,S,D,kindex,mprior,sprior,nh):
    #draw hyps based on plk
    #print "RRRRRRRRRRRRRR"+str([X,Y,S,D,kindex,mprior,sprior,nh])
    H = ESutils.drawhyp_plk(X,Y,S,D,kindex,mprior,sprior,nh)
    
    G = GPdc.GPcore(X,Y,S,D,[GPdc.kernel(kindex,X.shape[1],i) for i in H])
    
    return G
Example #10
0
def gen_dataset(nt, d, lb, ub, kindex, hyp, s=1e-9):
    X = draw_support(d, lb, ub, nt, SUPPORT_UNIFORM)
    D = [[sp.NaN]] * (nt)
    kf = GPdc.kernel(kindex, d, hyp)
    Kxx = GPdc.buildKsym_d(kf, X, D)
    Y = spl.cholesky(Kxx, lower=True) * sp.matrix(sps.norm.rvs(
        0, 1., nt)).T + sp.matrix(sps.norm.rvs(0, sp.sqrt(s), nt)).T
    S = sp.matrix([s] * nt).T
    return [X, Y, S, D]
Example #11
0
def gen_dataset(nt, d, lb, ub, kindex, hyp, s=1e-9):
    X = draw_support(d, lb, ub, nt, SUPPORT_UNIFORM)
    D = [[sp.NaN]] * (nt)
    kf = GPdc.kernel(kindex, d, hyp)
    Kxx = GPdc.buildKsym_d(kf, X, D)
    Y = (
        spl.cholesky(Kxx, lower=True) * sp.matrix(sps.norm.rvs(0, 1.0, nt)).T
        + sp.matrix(sps.norm.rvs(0, sp.sqrt(s), nt)).T
    )
    S = sp.matrix([s] * nt).T
    return [X, Y, S, D]
Example #12
0
 def train_costest(self):
     print self.X[:,0]
     X = self.X[:,0].copy().reshape([len(self.C),1])
     C = sp.array(self.C)
     D = [[sp.NaN]]*len(self.C)
     S = sp.zeros([len(self.C),1])
     lbc = sp.array([-3.,-2.,-6.])
     ubc = sp.array([3.,2.,1.])
     MLEC =  GPdc.searchMLEhyp(X,sp.log(C),S,D,lbc,ubc,GPdc.SQUEXPCS,mx=10000)
     print "MLEC "+str(MLEC)
     self.ce = GPdc.GPcore(X.copy(),sp.log(C),S,D,GPdc.kernel(GPdc.SQUEXPCS,1,sp.array(MLEC)))
     #self.ce = GPdc.GPcore(X,C,S,D,GPdc.kernel(GPdc.SQUEXPCS,1,sp.array([1.,0.3,1e-3])))
     #self.ce.printc()
     return
Example #13
0
def EIMAPaq(optstate,
            persist,
            ev=None,
            ub=None,
            lb=None,
            nrandinit=None,
            mprior=None,
            sprior=None,
            kindex=None,
            directmaxiter=None):
    para = copy.deepcopy(para)
    if persist == None:
        persist = {'n': 0, 'd': len(ub)}
    n = persist['n']
    d = persist['d']
    if n < nrandinit:
        persist['n'] += 1
        return randomaq(optstate, persist, ev=ev, lb=lb, ub=ub)
    logger.info('EIMAPaq')
    #logger.debug(sp.vstack([e[0] for e in optstate.ev]))
    #raise
    x = sp.vstack(optstate.x)
    y = sp.vstack(optstate.y)
    s = sp.vstack([e['s'] for e in optstate.ev])
    dx = [e['d'] for e in optstate.ev]
    MAP = GPdc.searchMAPhyp(x, y, s, dx, mprior, sprior, kindex)
    logger.info('MAPHYP {}'.format(MAP))

    G = GPdc.GPcore(x, y, s, dx, GPdc.kernel(kindex, d, MAP))

    def directwrap(xq, y):
        xq.resize([1, d])
        a = G.infer_lEI(xq, [ev['d']])
        return (-a[0, 0], 0)

    [xmin, ymin, ierror] = DIRECT.solve(directwrap,
                                        lb,
                                        ub,
                                        user_data=[],
                                        algmethod=0,
                                        maxf=directmaxiter,
                                        logfilename='/dev/null')
    #logger.debug([xmin,ymin,ierror])
    persist['n'] += 1
    return [i for i in xmin], ev, persist, {
        'MAPHYP': MAP,
        'logEImin': ymin,
        'DIRECTmessage': ierror
    }
Example #14
0
 def run_search(self):
     
     MAP = GPdc.searchMAPhyp(self.X,self.Y,self.S,self.D,self.mprior,self.sprior, self.kindex)
     try:
         del(self.G)
     except:
         pass
     self.G = GPdc.GPcore(self.X,self.Y,self.S,self.D,GPdc.kernel(self.kindex,self.d,MAP))
     def directwrap(x,y):
         x.resize([1,self.d])
         
         a = self.G.infer_LCB(x,[[sp.NaN]],1.)[0,0]
         return (a,0)
     [xmin,ymin,ierror] = DIRECT.solve(directwrap,self.lb,self.ub,user_data=[], algmethod=1, volper=self.volper, logfilename='/dev/null')
     return [xmin,self.s,[sp.NaN]]
Example #15
0
def genmat52ojf(d, lb, ub):
    from ESutils import gen_dataset

    nt = 14
    [X, Y, S, D] = gen_dataset(nt, d, lb, ub, GPdc.MAT52, sp.array([1.5] + [0.55] * d))
    G = GPdc.GPcore(X, Y, S, D, GPdc.kernel(GPdc.MAT52, d, sp.array([1.5] + [0.55] * d)))

    def ojf(x, **ev):
        dx = ev["d"]
        s = ev["s"]
        if ev["s"] > 0:
            noise = sp.random.normal(scale=sp.sqrt(ev["s"]))
        else:
            noise = 0
        return G.infer_m(sp.array(x), [dx])[0, 0] + noise, 1.0, dict()

    def dirwrap(x, y):
        z = G.infer_m(x, [[sp.NaN]])[0, 0]
        # z = obj(x,0.,[sp.NaN])
        return (z, 0)

    [xmin, ymin, ierror] = DIRECT.solve(dirwrap, lb, ub, user_data=[], algmethod=1, maxf=89000, logfilename="/dev/null")
    logger.info("generated function xmin {} ymin {} {}".format(xmin, ymin, ierror))

    return ojf, xmin, ymin
Example #16
0
def genbiasedmat52ojf(d, lb, ub, sls):
    # s normalised to 0 exact, 1
    from ESutils import gen_dataset

    nt = 20
    [X, Y, S, D] = gen_dataset(nt, d + 1, [0.0] + lb, [1.0] + ub, GPdc.MAT52, sp.array([1.5] + [0.30] * d + [sls]))

    G = GPdc.GPcore(X, Y, S, D, GPdc.kernel(GPdc.MAT52, d + 1, sp.array([1.5] + [0.30] * d + [sls])))

    def ojf(x, **ev):
        # print "\nojfinput: {} : {}".format(x,ev)
        dx = ev["d"]
        s = ev["s"]
        if ev["s"] > 0:
            noise = sp.random.normal(scale=sp.sqrt(ev["s"]))
        else:
            noise = 0
        xa = ev["xa"]
        x = sp.array(x)
        xfull = sp.hstack([x, xa])
        return G.infer_m(xfull, [dx])[0, 0] + noise, 1.0, dict()

    def dirwrap(x, y):
        z = G.infer_m(sp.hstack(sp.array(x) + [0.0]), [[sp.NaN]])[0, 0]
        return (z, 0)

    [xmin, ymin, ierror] = DIRECT.solve(dirwrap, lb, ub, user_data=[], algmethod=1, maxf=89000, logfilename="/dev/null")
    logger.info("generated function xmin {} ymin {}".format(xmin, ymin))
    return ojf, xmin, ymin
Example #17
0
def gensquexpIPdraw(d,lb,ub,sl,su,sfn,sls,cfn):
    #axis = 0 value = sl
    #d dimensional objective +1 for s
    nt=25
    #print sp.hstack([sp.array([[sl]]),lb])
    #print sp.hstack([sp.array([[su]]),ub])
    [X,Y,S,D] = ESutils.gen_dataset(nt,d+1,sp.hstack([sp.array([[sl]]),lb]).flatten(),sp.hstack([sp.array([[su]]),ub]).flatten(),GPdc.SQUEXP,sp.array([1.5]+[sls]+[0.30]*d))
    G = GPdc.GPcore(X,Y,S,D,GPdc.kernel(GPdc.SQUEXP,d+1,sp.array([1.5]+[sls]+[0.30]*d)))
    def obj(x,s,d,override=False):
        x = x.flatten()
        if sfn(x)==0. or override:
            noise = 0.
        else:
            noise = sp.random.normal(scale=sp.sqrt(sfn(x)))
        
        return [G.infer_m(x,[d])[0,0]+noise,cfn(x)]
    def dirwrap(x,y):
        z = obj(sp.array([[sl]+[i for i in x]]),sl,[sp.NaN],override=True)
        return (z,0)
    [xmin0,ymin0,ierror] = DIRECT.solve(dirwrap,lb,ub,user_data=[], algmethod=1, maxf=89000, logfilename='/dev/null')
    lb2 = xmin0-sp.ones(d)*1e-4
    ub2 = xmin0+sp.ones(d)*1e-4
    [xmin,ymin,ierror] = DIRECT.solve(dirwrap,lb2,ub2,user_data=[], algmethod=1, maxf=89000, logfilename='/dev/null')
    #print "RRRRR"+str([xmin0,xmin,ymin0,ymin,xmin0-xmin,ymin0-ymin])
    return [obj,xmin,ymin]
Example #18
0
def ojf(x,s,d,override=False):
    #print "called ojf: "+str(x)
    try:
        x=x.flatten(0)
    except:
        pass
    
    xlow = [-2.,-2.]
    xupp = [2.,2.]
    
    xthis = [xlow[i]+0.5*(xin+1)*(xupp[i]-xlow[i]) for i,xin in enumerate(x)]
    hyp = [10**i for i in xthis]
    
    print hyp
    t0=time.clock()
    llk = sp.clip(GPdc.GP_LKonly(X,Y,S,D,GPdc.kernel(GPdc.MAT52,1,sp.array(hyp))).plk(pm,ps),-1e60,1e60)
    
    t1=time.clock()
    if llk<-1.:
        out = sp.log(-llk)+1.
    else:
        out = -llk
    print "--->llk: {0} {1}    t: {2}".format(llk,out,t1-t0)
    
    return [out,t1-t0]
Example #19
0
def bounds(Xs,Ys,ns=100):
    #use a gp to infer mean and bounds on sets of x/y data that have diffent x
    #f,a = plt.subplots(2)
    #for i in xrange(len(Ys)):
    #    a[0].plot(Xs[i],Ys[i])
    
    X = sp.hstack(Xs)
    np = X.size
    Y = sp.hstack(Ys)
    X.resize([np,1])
    Y.resize([np,1])
    #a[1].plot(X,Y,'r.')
    np = X.size
    S = sp.zeros(np)
    D = [[sp.NaN]]*np
    ki = GPdc.MAT52CS
    mprior = sp.array([1.,2.,1.])
    sprior = sp.array([2.,2.,2.])
    #MAPH = GPdc.searchMAPhyp(X,Y,S,D,mprior,sprior, ki,mx=500)
    MAPH = sp.array([0.5,5.,0.3])
    g = GPdc.GPcore(X,Y,S,D,GPdc.kernel(ki,1,MAPH))
    sup = sp.linspace(min(X),max(X),ns)
    [m,V] = g.infer_diag_post(sup,[[sp.NaN]]*ns)
    std = sp.sqrt(V+MAPH[2])
    #plt.fill_between(sup.flatten(),(m-std).flatten(),(m+std).flatten(),facecolor='lightblue',edgecolor='lightblue',alpha=0.5)
    #a[1].plot(sup,m.flatten(),'b')
    return [sup,m,std]
Example #20
0
def gensquexpIPdraw(d, lb, ub, sl, su, sfn, sls, cfn):
    #axis = 0 value = sl
    #d dimensional objective +1 for s
    nt = 25
    #print sp.hstack([sp.array([[sl]]),lb])
    #print sp.hstack([sp.array([[su]]),ub])
    [X, Y,
     S, D] = ESutils.gen_dataset(nt, d + 1,
                                 sp.hstack([sp.array([[sl]]), lb]).flatten(),
                                 sp.hstack([sp.array([[su]]), ub]).flatten(),
                                 GPdc.SQUEXP,
                                 sp.array([1.5] + [sls] + [0.30] * d))
    G = GPdc.GPcore(
        X, Y, S, D,
        GPdc.kernel(GPdc.SQUEXP, d + 1, sp.array([1.5] + [sls] + [0.30] * d)))

    def obj(x, s, d, override=False):
        x = x.flatten()
        if sfn(x) == 0. or override:
            noise = 0.
        else:
            noise = sp.random.normal(scale=sp.sqrt(sfn(x)))

        return [G.infer_m(x, [d])[0, 0] + noise, cfn(x)]

    def dirwrap(x, y):
        z = obj(sp.array([[sl] + [i for i in x]]), sl, [sp.NaN], override=True)
        return (z, 0)

    [xmin0, ymin0, ierror] = DIRECT.solve(dirwrap,
                                          lb,
                                          ub,
                                          user_data=[],
                                          algmethod=1,
                                          maxf=89000,
                                          logfilename='/dev/null')
    lb2 = xmin0 - sp.ones(d) * 1e-4
    ub2 = xmin0 + sp.ones(d) * 1e-4
    [xmin, ymin, ierror] = DIRECT.solve(dirwrap,
                                        lb2,
                                        ub2,
                                        user_data=[],
                                        algmethod=1,
                                        maxf=89000,
                                        logfilename='/dev/null')
    #print "RRRRR"+str([xmin0,xmin,ymin0,ymin,xmin0-xmin,ymin0-ymin])
    return [obj, xmin, ymin]
Example #21
0
 def llks(self, hy, sub):
     t0 = time.clock()
     Xs = sp.empty([sub, self.d])
     Ys = sp.empty([sub, 1])
     Ss = sp.zeros([sub, 1])
     Ds = []
     ix = npr.choice(range(self.n), size=sub, replace=False)
     for i, x in enumerate(ix):
         Xs[i, :] = self.X[x, :]
         Ys[i, :] = self.Y[x, :]
         Ds.append(self.D[x])
     t1 = time.clock()
     r = GPdc.GP_LKonly(Xs, Ys, Ss, Ds, GPdc.kernel(self.ki, self.d,
                                                    hy)).llk()
     t2 = time.clock()
     #print [t1-t0,t2-t1]
     return [r, t2 - t0]
Example #22
0
    def f(loghyp):
        ub = hm + 1.8 * hs
        lb = hm - 1.8 * hs
        if all(loghyp < ub) and all(loghyp > lb):
            r = GPdc.GP_LKonly(
                X, Y, S, D, GPdc.kernel(ki, X.shape[1],
                                        [10**i for i in loghyp])).plk(hm, hs)
            if sp.isnan(r):

                class MJMError(Exception):
                    pass

                print 'nan from GPLKonly with input'
                print[X, Y, S, D, ki, hm, hs, n, burn, subsam]
                raise MJMError('nan from GPLKonly with input')
        else:
            r = -1e99
        #print [loghyp, r]
        return r
Example #23
0
def ojfa(x, s, d, override=False):
    #print "called ojf: "+str(x)

    try:
        x = x.flatten(0)
    except:
        pass

    xlow = [-2., -2.]
    xupp = [2., 2.]

    xthis = [
        xlow[i] + 0.5 * (xin + 1) * (xupp[i] - xlow[i])
        for i, xin in enumerate(x[1:])
    ]
    hyp = [10**i for i in xthis]
    #hyp = [10**i for i in x.flatten()[1:]]

    print hyp
    t0 = time.clock()
    sub = x.flatten()[0]
    npts = int((1. - 0.9 * sub) * n)
    if override:
        npts = n
    print "subsampling {0} of {1} at x[0]={2}".format(npts, n, x.flatten()[0])
    ps = npr.choice(range(n), size=npts, replace=False)
    Xd = sp.vstack([X[i] for i in ps])
    Yd = sp.vstack([Y[i] for i in ps])
    Sd = sp.vstack([S[i] for i in ps])
    Dd = [[sp.NaN]] * npts

    llk = GPdc.GP_LKonly(Xd, Yd, Sd, Dd,
                         GPdc.kernel(GPdc.MAT52, 1,
                                     sp.array(hyp))).plk(pm, ps)
    t1 = time.clock()
    if llk < -1.:
        out = sp.log(-llk) + 1.
    else:
        out = -llk
    print "--->llk: {0} {1}    t: {2}".format(llk, out, t1 - t0)

    return [out, t1 - t0]
Example #24
0
 def train_costest(self):
     print self.X[:, 0]
     X = self.X[:, 0].copy().reshape([len(self.C), 1])
     C = sp.array(self.C)
     D = [[sp.NaN]] * len(self.C)
     S = sp.zeros([len(self.C), 1])
     lbc = sp.array([-3., -2., -6.])
     ubc = sp.array([3., 2., 1.])
     MLEC = GPdc.searchMLEhyp(X,
                              sp.log(C),
                              S,
                              D,
                              lbc,
                              ubc,
                              GPdc.SQUEXPCS,
                              mx=10000)
     print "MLEC " + str(MLEC)
     self.ce = GPdc.GPcore(X.copy(), sp.log(C), S, D,
                           GPdc.kernel(GPdc.SQUEXPCS, 1, sp.array(MLEC)))
     #self.ce = GPdc.GPcore(X,C,S,D,GPdc.kernel(GPdc.SQUEXPCS,1,sp.array([1.,0.3,1e-3])))
     #self.ce.printc()
     return
Example #25
0
def genbiasedmat52ojf(d, lb, ub, sls):
    #s normalised to 0 exact, 1
    from ESutils import gen_dataset
    nt = 20
    [X, Y, S, D] = gen_dataset(nt, d + 1, [0.] + lb, [1.] + ub, GPdc.MAT52,
                               sp.array([1.5] + [0.30] * d + [sls]))

    G = GPdc.GPcore(
        X, Y, S, D,
        GPdc.kernel(GPdc.MAT52, d + 1, sp.array([1.5] + [0.30] * d + [sls])))

    def ojf(x, **ev):
        #print "\nojfinput: {} : {}".format(x,ev)
        dx = ev['d']
        s = ev['s']
        if ev['s'] > 0:
            noise = sp.random.normal(scale=sp.sqrt(ev['s']))
        else:
            noise = 0
        xa = ev['xa']
        x = sp.array(x)
        xfull = sp.hstack([x, xa])
        return G.infer_m(xfull, [dx])[0, 0] + noise, 1., dict()

    def dirwrap(x, y):
        z = G.infer_m(sp.hstack(sp.array(x) + [0.]), [[sp.NaN]])[0, 0]
        return (z, 0)

    [xmin, ymin, ierror] = DIRECT.solve(dirwrap,
                                        lb,
                                        ub,
                                        user_data=[],
                                        algmethod=1,
                                        maxf=89000,
                                        logfilename='/dev/null')
    logger.info('generated function xmin {} ymin {}'.format(xmin, ymin))
    return ojf, xmin, ymin
Example #26
0
 def llks(self,hy,sub):
     t0 = time.clock()
     Xs = sp.empty([sub,self.d])
     Ys = sp.empty([sub,1])
     Ss = sp.zeros([sub,1])
     Ds = []
     ix = npr.choice(range(self.n),size=sub, replace=False)
     for i,x in enumerate(ix):
         Xs[i,:] = self.X[x,:]
         Ys[i,:] = self.Y[x,:]
         Ds.append(self.D[x])
     t1 = time.clock()
     r = GPdc.GP_LKonly(Xs,Ys,Ss,Ds,GPdc.kernel(self.ki,self.d,hy)).llk()
     t2=time.clock()
     #print [t1-t0,t2-t1]
     return [r,t2-t0]
Example #27
0
 def __init__(self,X,Y,S,D,lb,ub,kindex,mprior,sprior,DH_SAMPLES=8,DM_SAMPLES=8, DM_SUPPORT=400,DM_SLICELCBPARA=1.,mode=ESutils.SUPPORT_SLICELCB,noS=False):
     
     
     
     print "PES init:"
     self.lb=lb
     self.ub=ub
     self.noS=noS
     if noS:
         S=sp.zeros(S.shape)
     self.G = makeG(X,Y,S,D,kindex,mprior,sprior,DH_SAMPLES)
     HS = sp.vstack([k.hyp for k in self.G.kf])
     print "\nhyp mean: "+str(sp.mean(HS,axis=0))
     print "hyp std:  "+str(sp.sqrt(sp.mean(HS,axis=0)))
     self.Z = drawmins(self.G,DM_SAMPLES,lb,ub,SUPPORT=DM_SUPPORT,SLICELCB_PARA=DM_SLICELCBPARA,mode=mode)
     print "mindraws: "+str(self.Z)
     self.Ga = [GPdc.GPcore(*addmins(self.G,X,Y,S,D,self.Z[i,:])+[self.G.kf]) for i in xrange(DM_SAMPLES)]
Example #28
0
 def __init__(self,X,Y,S,D,lb,ub,kindex,mprior,sprior,axis,value,DH_SAMPLES=8,DM_SAMPLES=8, DM_SUPPORT=400,DM_SLICELCBPARA=1.,AM_POLICY=NOMIN,mode=ESutils.SUPPORT_SLICELCB,noS=False):
     print "PES init:"
     self.lb=lb
     self.ub=ub
     self.noS=noS
     self.X=X
     if noS:
         S=sp.zeros(S.shape)
     print [X.shape,Y.shape,mprior,sprior]
     self.G = makeG(X,Y,S,D,kindex,mprior,sprior,DH_SAMPLES)
     HS = sp.vstack([k.hyp for k in self.G.kf])
     print "\nhyp mean: "+str(sp.mean(HS,axis=0))
     print "hyp std:  "+str(sp.sqrt(sp.mean(HS,axis=0)))
     self.Z = drawmins_inplane(self.G,DM_SAMPLES,lb,ub,axis=axis,value=value,SUPPORT=DM_SUPPORT,SLICELCB_PARA=DM_SLICELCBPARA,mode=mode)
     print "mindraws:\n"+str(self.Z)
     self.Ga = [GPdc.GPcore(*addmins_inplane(self.G,X,Y,S,D,self.Z[i,:],axis=axis,value=value,MINPOLICY=AM_POLICY)+[self.G.kf]) for i in xrange(DM_SAMPLES)]
     return
Example #29
0
    def f(loghyp):
        ub = hm + 1.8 * hs
        lb = hm - 1.8 * hs
        if all(loghyp < ub) and all(loghyp > lb):
            r = GPdc.GP_LKonly(X, Y, S, D, GPdc.kernel(ki, X.shape[1], [10 ** i for i in loghyp])).plk(hm, hs)
            if sp.isnan(r):

                class MJMError(Exception):
                    pass

                print "nan from GPLKonly with input"
                print [X, Y, S, D, ki, hm, hs, n, burn, subsam]
                raise MJMError("nan from GPLKonly with input")
        else:
            r = -1e99
        # print [loghyp, r]
        return r
Example #30
0
def gensquexpdraw(d,lb,ub,ignores=-1):
    nt=14
    [X,Y,S,D] = ESutils.gen_dataset(nt,d,lb,ub,GPdc.SQUEXP,sp.array([1.5]+[0.30]*d))
    G = GPdc.GPcore(X,Y,S,D,GPdc.kernel(GPdc.SQUEXP,d,sp.array([1.5]+[0.30]*d)))
    def obj(x,s,d,override=False):
        #print [x,s,d]
        if ignores>0:
            s=ignores
        if s==0. or override:
            noise = 0.
        else:
            noise = sp.random.normal(scale=sp.sqrt(s))
        print "EVAL WITH NOISE: "+str(noise) + "FROM S= "+str(s)
        return [G.infer_m(x,[d])[0,0]+noise,1.]
    def dirwrap(x,y):
        z = G.infer_m(x,[[sp.NaN]])[0,0]
        #z = obj(x,0.,[sp.NaN])
        return (z,0)
    [xmin,ymin,ierror] = DIRECT.solve(dirwrap,lb,ub,user_data=[], algmethod=1, maxf=89000, logfilename='/dev/null')
    
    return [obj,xmin,ymin]
Example #31
0
def ojfa(x,s,d,override=False):
    #print "called ojf: "+str(x)
    
    try:
        x=x.flatten(0)
    except:
        pass
    
    xlow = [-2.,-2.]
    xupp = [2.,2.]
    
    xthis = [xlow[i]+0.5*(xin+1)*(xupp[i]-xlow[i]) for i,xin in enumerate(x[1:])]
    hyp = [10**i for i in xthis]
    #hyp = [10**i for i in x.flatten()[1:]]
    
    
    print hyp
    t0=time.clock()
    sub = x.flatten()[0]
    npts = int((1.-0.9*sub)*n)
    if override:
        npts=n
    print "subsampling {0} of {1} at x[0]={2}".format(npts,n,x.flatten()[0])
    ps = npr.choice(range(n),size=npts, replace=False)
    Xd = sp.vstack([X[i] for i in ps])
    Yd = sp.vstack([Y[i] for i in ps])
    Sd = sp.vstack([S[i] for i in ps])
    Dd = [[sp.NaN]]*npts
    
    llk = GPdc.GP_LKonly(Xd,Yd,Sd,Dd,GPdc.kernel(GPdc.MAT52,1,sp.array(hyp))).plk(pm,ps)
    t1=time.clock()
    if llk<-1.:
        out = sp.log(-llk)+1.
    else:
        out = -llk
    print "--->llk: {0} {1}    t: {2}".format(llk,out,t1-t0)
    
    return [out,t1-t0]
Example #32
0
#!/usr/bin/env python2
#encoding: UTF-8

#test the 1d periodic matern5/2 kernel
import sys
sys.path.append("./..")
import scipy as sp
from matplotlib import pyplot as plt
import seaborn as sns

import GPdc

kp = GPdc.kernel(GPdc.MAT52, 1, sp.array([0.75, 0.1]))
kq = GPdc.kernel(GPdc.MAT52PER, 1, sp.array([0.75, 0.1, 4.5]))
kr = GPdc.kernel(GPdc.MAT52PPT, 1, sp.array([0.75, 0.1, 4.5, 15.]))
ks = GPdc.kernel(GPdc.DEV, 1, sp.array([0.75, 0.1, 4.5, 0.5, 0.4, 10.]))
#support
ns = 1201
xax = sp.array([sp.linspace(-15, 15, ns)]).T
d0 = [[sp.NaN]]
x0 = sp.array([[0.]])

p = sp.empty(ns)
q = sp.empty(ns)
r = sp.empty(ns)
s = sp.empty(ns)
for i in xrange(ns):
    p[i] = kp(x0, xax[i, :], d0, d0)
    q[i] = kq(x0, xax[i, :], d0, d0) + 1
    r[i] = kr(x0, xax[i, :], d0, d0) + 2
    s[i] = ks(x0, xax[i, :], d0, d0) + 3
Example #33
0
import ctypes as ct
import scipy as sp
from scipy import stats as sps
from scipy import linalg as spl
from matplotlib import pyplot as plt
import os
libGP = ct.cdll.LoadLibrary(
    os.path.join(os.path.dirname(os.path.realpath(__file__)),
                 '../../../dist/Release/GNU-Linux/libGPshared.so'))

ctpd = ct.POINTER(ct.c_double)

import GPdc

ni = 50
kf = GPdc.kernel(GPdc.SQUEXP, 1, sp.array([1.3, 0.3]))
X = sp.matrix(sp.linspace(-1, 1, ni)).T
D = [[sp.NaN]] * ni
Kxx = GPdc.buildKsym_d(kf, X, D)

tmp = spl.cholesky(Kxx, lower=True)
Ch = sp.vstack([tmp[i, :] for i in xrange(ni)])  #hack/force row major storage

z = 5

b = sp.empty([ni, z])

libGP.drawcov(Ch.ctypes.data_as(ctpd), ct.c_int(ni), b.ctypes.data_as(ctpd),
              ct.c_int(z))

#print b
Example #34
0
f,ax = plt.subplots(n,sharex=True)
ns=200
sup = sp.linspace(-6,6,ns)
for i in xrange(n):
    ax[i].plot(sup,sps.norm.pdf(sup,loc=m[i],scale=sp.sqrt(v[i,i])),'b')
    ax[i].plot(sup,sps.norm.pdf(sup,loc=mu[i],scale=sp.sqrt(vu[i,i])),'r')
    ax[i].twinx().plot(sup,sps.norm.cdf(Z[i]*(sup-Y[i])/max(F[i],1e-20))*sps.norm.pdf(sup,loc=m[i],scale=sp.sqrt(v[i,i])),'g')
#est on a gp

import ESutils
import GPdc
nt=5
X = sp.matrix(sp.linspace(-1,1,nt)).T
D = [[sp.NaN]]*(nt)
hyp = sp.array([1.5,0.15])
kf = GPdc.kernel(GPdc.SQUEXP,1,hyp)
Kxx = GPdc.buildKsym_d(kf,X,D)
Y = spl.cholesky(Kxx,lower=True)*sp.matrix(sps.norm.rvs(0,1.,nt)).T+sp.matrix(sps.norm.rvs(0,1e-3,nt)).T
S = sp.matrix([1e-2]*nt).T
g = GPdc.GPcore(X,Y,S,D,kf)
f,a = plt.subplots(2)

Xe = sp.array([-0.25,0.25])
De = [[sp.NaN]]*2
[m0,V0] = g.infer_full(Xe,De)
Ye = sp.array([2.,-2.])
Ze = sp.array([1.,-1.])
Fe = sp.array([(1e-6)**2,(1e-6)**2])

mt,vt = eprop.expectation_prop(m0,V0,Ye,Ze,Fe,20)
print D+De
Example #35
0
#!/usr/bin/env python2
# encoding: UTF-8

# test the 1d periodic matern5/2 kernel
import sys

sys.path.append("./..")
import scipy as sp
from matplotlib import pyplot as plt
import seaborn as sns

import GPdc


kp = GPdc.kernel(GPdc.MAT52, 1, sp.array([0.75, 0.1]))
kq = GPdc.kernel(GPdc.MAT52PER, 1, sp.array([0.75, 0.1, 4.5]))
kr = GPdc.kernel(GPdc.MAT52PPT, 1, sp.array([0.75, 0.1, 4.5, 15.0]))
ks = GPdc.kernel(GPdc.DEV, 1, sp.array([0.75, 0.1, 4.5, 0.5, 0.4, 10.0]))
# support
ns = 1201
xax = sp.array([sp.linspace(-15, 15, ns)]).T
d0 = [[sp.NaN]]
x0 = sp.array([[0.0]])

p = sp.empty(ns)
q = sp.empty(ns)
r = sp.empty(ns)
s = sp.empty(ns)
for i in xrange(ns):
    p[i] = kp(x0, xax[i, :], d0, d0)
    q[i] = kq(x0, xax[i, :], d0, d0) + 1
Example #36
0
# To change this template file, choose Tools | Templates
# and open the template in the editor.

from scipy import stats as sps
from scipy import linalg as spl
import scipy as sp
from matplotlib import pyplot as plt

import GPdc

nt=12
X = sp.matrix(sp.linspace(-1,1,nt)).T
D = [[sp.NaN]]*(nt)

hyp = sp.array([1.5,0.15])
kf = GPdc.gen_sqexp_k_d(hyp)
print "X"
print kf(sp.array([0.1]),sp.array([0.2]),[[sp.NaN]],[[sp.NaN]])
Kxx = GPdc.buildKsym_d(kf,X,D)
print "X"
Y = spl.cholesky(Kxx,lower=True)*sp.matrix(sps.norm.rvs(0,1.,nt)).T+sp.matrix(sps.norm.rvs(0,1e-3,nt)).T
S = sp.matrix([1e-6]*nt).T
f0,a0 = plt.subplots(1)
a0.plot(sp.array(X[:,0]).flatten(),Y,'g.')


lb = sp.array([-2.,-2.])
ub = sp.array([2.,2.])
MLEH =  GPdc.searchMLEhyp(X,Y,S,D,lb,ub,GPdc.SQUEXP,mx=10000)
print "X"
print MLEH
Example #37
0
def traincfn(x, c):
    n = x.size
    g = GPdc.GPcore(x, c, sp.array([1e-1] * n), [[sp.NaN]] * n, GPdc.kernel(GPdc.MAT52, 1, [1.0, 0.2]))

    return cfnobj(g)
Example #38
0
from scipy import stats as sps
from scipy import linalg as spl
import scipy as sp
from matplotlib import pyplot as plt
import ESutils
import GPdc

nt = 82
X = sp.matrix(sp.linspace(-1, 1, nt)).T
D = [[sp.NaN]] * (nt)

hyp0 = sp.array([1.5, 0.15])
hyp1 = sp.array([1.5, 0.05])
hyp2 = sp.array([1.5, 0.20])
kf = GPdc.kernel(GPdc.SQUEXP, 1, hyp0)

Kxx = GPdc.buildKsym_d(kf, X, D)

Y = spl.cholesky(Kxx, lower=True) * sp.matrix(sps.norm.rvs(
    0, 1., nt)).T + sp.matrix(sps.norm.rvs(0, 1e-3, nt)).T
S = sp.matrix([1e-6] * nt).T

G = GPdc.GPcore(X, Y, S, D, [
    GPdc.kernel(GPdc.SQUEXP, 1, hyp0),
    GPdc.kernel(GPdc.SQUEXP, 1, hyp1),
    GPdc.kernel(GPdc.SQUEXP, 1, hyp2),
    GPdc.kernel(GPdc.SQUEXP, 1, hyp0)
])
#G.printc()
Example #39
0
np = 200
X = sp.array([sp.linspace(0,nf,np)]).T

H = sp.empty([np,1])
T = sp.empty([np,1])
for i in xrange(np):
    [H[i,0],T[i,0]] = L.llks(sp.array([1.3,0.13,0.2,1e-2]),int(X[i,0]))


#lb = sp.array([0.,0.,-4.,-0.5*float(nf),float(nf)])
#ub = sp.array([4.,3.,3.,0.,1.5*float(nf)])
#MLEH =  GPdc.searchMLEhyp(X,H,sp.zeros([np,1]),[[sp.NaN]]*(np),lb,ub,GPdc.SQUEXPPS,mx=10000)
#G = GPdc.GPcore(X.copy(),H,sp.zeros([np,1]),[[sp.NaN]]*(np),GPdc.kernel(GPdc.SQUEXPPS,1,sp.array(MLEH)))
lb = sp.array([0.,0.,-4.,-1.,-3.])
ub = sp.array([4.,3.,3.,0.5,3.])
MLEH =  GPdc.searchMLEhyp(1./float(nf)*X,H,sp.zeros([np,1]),[[sp.NaN]]*(np),lb,ub,GPdc.SQUEXPBS,mx=10000)
G = GPdc.GPcore(1./float(nf)*X.copy(),H,sp.zeros([np,1]),[[sp.NaN]]*(np),GPdc.kernel(GPdc.SQUEXPBS,1,sp.array(MLEH)))

[m,v] = G.infer_diag(1./float(nf)*X,[[sp.NaN]]*(np))

S = sp.empty([np,1])
for i in xrange(np):
    S[i,0] = MLEH[2]*((1./float(nf)*X[i,0])**(MLEH[3]*MLEH[4]))* ((1.-1./float(nf)*X[i,0])**(MLEH[3]*(1.-MLEH[4])))

lbc = sp.array([-4.,0.,-6.])
ubc = sp.array([2.,3.,0.])
MLEC =  GPdc.searchMLEhyp(X,sp.log(T),sp.zeros([np,1]),[[sp.NaN]]*(np),lbc,ubc,GPdc.SQUEXPCS,mx=10000)
C = GPdc.GPcore(X.copy(),sp.log(T),sp.zeros([np,1]),[[sp.NaN]]*(np),GPdc.kernel(GPdc.SQUEXPCS,1,sp.array(MLEC)))

f,a = plt.subplots(2)
a[0].plot(X.flatten(),H.flatten(),'g.')
Example #40
0
from scipy import linalg as spl
from matplotlib import pyplot as plt
import GPdc
import OPTutils
import ESutils
import DIRECT

#base dimension
d = 2
kindex = GPdc.MAT52
nt = 34
lb = sp.array([0.]+[-1.]*d)
ub = sp.array([5.]+[1.]*d)
Htrue = sp.array([1.4,4.]+[0.25]*d)
[X,Y,S,D] = ESutils.gen_dataset(nt,d+1,lb,ub,kindex,Htrue, s=1e-8)
G = GPdc.GPcore(X,Y,S,D,GPdc.kernel(kindex,d+1,Htrue))

def ojfaugnn(x):
    return G.infer_m(x,[[sp.NaN]])[0,0]

def opt_ip(s):
    def dwrap(x,y):
        X = sp.hstack([[s],x])
        return (ojfaugnn(X),0)
    [xm,ym,ierror] = DIRECT.solve(dwrap,lb[1:],ub[1:], user_data=[], algmethod=1, maxf=12000, logfilename='/dev/null')
    print "DIRECT found: " +str([xm,ym,ierror])
    return xm

mintrue = opt_ip(0.)
minaug = sp.hstack([[0.],mintrue])
Example #41
0
#Draw 200 hyperparameters from the posterior, plot the draws on a countour plot, first for very few points, then a large number

import ESutils
import scipy as sp
from scipy import linalg as spl
from scipy import stats as sps
from matplotlib import pyplot as plt

import GPdc
#test on a single point
nt = 3
X = ESutils.draw_support(1, sp.array([-1.]), sp.array([1.]), nt,
                         ESutils.SUPPORT_UNIFORM)
D = [[sp.NaN]] * (nt)
hyp = sp.array([1.5, 0.15])
kf = GPdc.gen_sqexp_k_d(hyp)
Kxx = GPdc.buildKsym_d(kf, X, D)
Y = spl.cholesky(Kxx, lower=True) * sp.matrix(sps.norm.rvs(
    0, 1., nt)).T + sp.matrix(sps.norm.rvs(0, 1e-3, nt)).T
S = sp.matrix([1e-6] * nt).T

G = GPdc.GPcore(X, Y, S, D, GPdc.kernel(GPdc.SQUEXP, 2, hyp))

ng = 40
A = sp.empty([ng, ng])
print 'startimage1'
sup = sp.logspace(-3, 2, ng)
for i, hi in enumerate(sup):
    for j, hj in enumerate(sup):
        A[i,
          j] = GPdc.GP_LKonly(X, Y, S, D,
Example #42
0
from scipy import linalg as spl
from matplotlib import pyplot as plt
import GPdc
import OPTutils
import ESutils
import DIRECT

#base dimension
d = 2
kindex = GPdc.MAT52
nt = 34
lb = sp.array([0.] + [-1.] * d)
ub = sp.array([5.] + [1.] * d)
Htrue = sp.array([1.4, 4.] + [0.25] * d)
[X, Y, S, D] = ESutils.gen_dataset(nt, d + 1, lb, ub, kindex, Htrue, s=1e-8)
G = GPdc.GPcore(X, Y, S, D, GPdc.kernel(kindex, d + 1, Htrue))


def ojfaugnn(x):
    return G.infer_m(x, [[sp.NaN]])[0, 0]


def opt_ip(s):
    def dwrap(x, y):
        X = sp.hstack([[s], x])
        return (ojfaugnn(X), 0)

    [xm, ym, ierror] = DIRECT.solve(dwrap,
                                    lb[1:],
                                    ub[1:],
                                    user_data=[],
Example #43
0
from scipy import stats as sps
from scipy import linalg as spl
import scipy as sp
from matplotlib import pyplot as plt
import ESutils
import GPdc

nt=82
X = sp.matrix(sp.linspace(-1,1,nt)).T
D = [[sp.NaN]]*(nt)

hyp0 = sp.array([1.5,0.15])
hyp1 = sp.array([1.5,0.05])
hyp2 = sp.array([1.5,0.20])
kf = GPdc.kernel(GPdc.SQUEXP,1,hyp0)

Kxx = GPdc.buildKsym_d(kf,X,D)

Y = spl.cholesky(Kxx,lower=True)*sp.matrix(sps.norm.rvs(0,1.,nt)).T+sp.matrix(sps.norm.rvs(0,1e-3,nt)).T
S = sp.matrix([1e-6]*nt).T

G = GPdc.GPcore(X,Y,S,D,[GPdc.kernel(GPdc.SQUEXP,1,hyp0),GPdc.kernel(GPdc.SQUEXP,1,hyp1),GPdc.kernel(GPdc.SQUEXP,1,hyp2),GPdc.kernel(GPdc.SQUEXP,1,hyp0)])
#G.printc()

np=100
sup = sp.linspace(-1,1,np)
Dp = [[sp.NaN]]*np
Xp = sp.vstack([sp.array([i]) for i in sup])

m = G.infer_m(Xp,Dp)
Example #44
0
X = sp.vstack([sp.array([i,0.]) for i in x])
Y = sp.matrix(y).T
#X = sp.matrix([[0.,-9.],[0.2,5.],[0.4,12.],[0.6,3.],[0.8,9.]])

#Y = sp.matrix([0.2,0.1,0.,-0.15,-0.3]).T

D = [[sp.NaN]]*(X.shape[0])
S = sp.matrix([0.005**2]*X.shape[0]).T
f0 = plt.figure()
a0 = plt.subplot(111)
a0.plot(sp.array(X[:,0]).flatten(),Y,'g.')


lb = sp.array([-2.,-1.,-2.])
ub = sp.array([2.,1.,2.])
MLEH =  GPdc.searchMLEhyp(X,Y,S,D,lb,ub,GPdc.LIN1,mx=10000)

print MLEH
G = GPdc.GPcore(X,Y,S,D,GPdc.kernel(GPdc.LIN1,2,MLEH))
print G.llk()


np=180
sup = sp.linspace(-1,1,np)
Dp = [[sp.NaN]]*np
Xp = sp.vstack([sp.array([i,1.]) for i in sup])

[m,v] = G.infer_diag(Xp,Dp)
a0.plot(sup,m.flatten())
sq = sp.sqrt(v)
Example #45
0
    ax[i].plot(sup, sps.norm.pdf(sup, loc=mu[i], scale=sp.sqrt(vu[i, i])), "r")
    ax[i].twinx().plot(
        sup,
        sps.norm.cdf(Z[i] * (sup - Y[i]) / max(F[i], 1e-20)) * sps.norm.pdf(sup, loc=m[i], scale=sp.sqrt(v[i, i])),
        "g",
    )
# est on a gp

import ESutils
import GPdc

nt = 5
X = sp.matrix(sp.linspace(-1, 1, nt)).T
D = [[sp.NaN]] * (nt)
hyp = sp.array([1.5, 0.15])
kf = GPdc.kernel(GPdc.SQUEXP, 1, hyp)
Kxx = GPdc.buildKsym_d(kf, X, D)
Y = spl.cholesky(Kxx, lower=True) * sp.matrix(sps.norm.rvs(0, 1.0, nt)).T + sp.matrix(sps.norm.rvs(0, 1e-3, nt)).T
S = sp.matrix([1e-2] * nt).T
g = GPdc.GPcore(X, Y, S, D, kf)
f, a = plt.subplots(2)

Xe = sp.array([-0.25, 0.25])
De = [[sp.NaN]] * 2
[m0, V0] = g.infer_full(Xe, De)
Ye = sp.array([2.0, -2.0])
Ze = sp.array([1.0, -1.0])
Fe = sp.array([(1e-6) ** 2, (1e-6) ** 2])

mt, vt = eprop.expectation_prop(m0, V0, Ye, Ze, Fe, 20)
print D + De
Example #46
0
# To change this license header, choose License Headers in Project Properties.
# To change this template file, choose Tools | Templates
# and open the template in the editor.
import sys

sys.path.append("./..")
import scipy as sp
from matplotlib import pyplot as plt
import seaborn as sns

import GPdc

D = 4


ke = GPdc.kernel(GPdc.SQUEXP, D, sp.array([0.75, 0.1, 0.2, 0.25, 0.1]))
km = GPdc.kernel(GPdc.MAT52, D, sp.array([0.75, 0.1, 0.2, 0.25, 0.1]))
# support
ns = 1201
xax = sp.linspace(-1, 1, ns)
Xo = sp.vstack([0.0, 0.0, 0.0, 0.0] * ns)
X0 = sp.vstack([[i, 0.0, 0.0, 0.0] for i in xax])
X1 = sp.vstack([[0.0, i, 0.0, 0.0] for i in xax])
X2 = sp.vstack([[0.0, 0.0, i, 0.0] for i in xax])
X3 = sp.vstack([[0.0, 0.0, 0.0, i] for i in xax])
C0 = sp.vstack([[-i, i, -i, i] for i in xax])
C1 = sp.vstack([[i, -i, i, -i] for i in xax])
C2 = sp.vstack([[i, -i, -i, i] for i in xax])
C3 = sp.vstack([[-i, i, i, -i] for i in xax])
Xax = [X0, X1, X2, X3]
Cax = [C0, C1, C2, C3]
Example #47
0
#Draw 200 hyperparameters from the posterior, plot the draws on a countour plot, first for very few points, then a large number

import ESutils
import scipy as sp
from scipy import linalg as spl
from scipy import stats as sps
from matplotlib import pyplot as plt

import GPdc
#test on a single point
nt=3
X = ESutils.draw_support(1, sp.array([-1.]),sp.array([1.]),nt,ESutils.SUPPORT_UNIFORM)
D = [[sp.NaN]]*(nt)
hyp = sp.array([1.5,0.15])
kf = GPdc.gen_sqexp_k_d(hyp)
Kxx = GPdc.buildKsym_d(kf,X,D)
Y = spl.cholesky(Kxx,lower=True)*sp.matrix(sps.norm.rvs(0,1.,nt)).T+sp.matrix(sps.norm.rvs(0,1e-3,nt)).T
S = sp.matrix([1e-6]*nt).T


G = GPdc.GPcore(X,Y,S,D,GPdc.kernel(GPdc.SQUEXP,2,hyp))

ng = 40
A = sp.empty([ng,ng])
print 'startimage1'
sup = sp.logspace(-3,2,ng)
for i,hi in enumerate(sup):
    for j,hj in enumerate(sup):
        A[i,j] = GPdc.GP_LKonly(X,Y,S,D,GPdc.kernel(GPdc.SQUEXP,2,sp.array([hi,hj]))).plk(sp.array([0.,-1.]),sp.array([1.,1.]))
A = -sp.log10(-A+sp.amax(A)+1.)
Example #48
0
# To change this license header, choose License Headers in Project Properties.
# To change this template file, choose Tools | Templates
# and open the template in the editor.

from scipy import stats as sps
from scipy import linalg as spl
import scipy as sp
from matplotlib import pyplot as plt

import GPdc

ni = 100
kf = GPdc.kernel(GPdc.SQUEXP,2,sp.array([1.3,0.3,0.2]))
X = sp.random.uniform(-1,1,size=[ni,2])
D = [[sp.NaN]]*ni
Kxx = GPdc.buildKsym_d(kf,X,D)
s = 1e-2
Y = spl.cholesky(Kxx,lower=True)*sp.matrix(sps.norm.rvs(0,1.,ni)).T+sp.matrix(sps.norm.rvs(0,s,ni)).T
S = sp.ones(ni)*s
print Y
MLEHYP = GPdc.searchMLEhyp(X,Y,S,D,sp.array([2.,2.,2.]),sp.array([-2.,-2.,-2.]), GPdc.SQUEXP)
print MLEHYP

MAPHYP = GPdc.searchMAPhyp(X,Y,S,D,sp.array([0.,0.,0.]),sp.array([1.,1.,1.]), GPdc.SQUEXP)
print MAPHYP
Example #49
0
lb = sp.array([-1.]*d)
ub = sp.array([1.]*d)
[X,Y,S,D] = ESutils.gen_dataset(nt,d,lb,ub,GPdc.SQUEXP,sp.array([0.9,0.25]),s=0.)
S*=0.
for i in xrange(nt):
    x = X[i,0]
    s = -(1e-2)*(x-1.)*(x+1.1)
    Y[i,0]+= sps.norm.rvs(0,sp.sqrt(s))

f0 = plt.figure()
a0 = plt.subplot(111)
a0.plot(sp.array(X[:,0]).flatten(),Y,'g.')

lb = sp.array([-2.,-2.,-9,-2.,-2.])
ub = sp.array([2.,2.,-1,2.,2.])
MLEH =  GPdc.searchMLEhyp(X,Y,S,D,lb,ub,GPdc.SQUEXPPS,mx=20000)

mprior = sp.array([0.,-1.,-5.,-0.5,0.5])
sprior = sp.array([1.,1.,3.,1.,1.])

MAPH = GPdc.searchMAPhyp(X,Y,S,D,mprior,sprior,GPdc.SQUEXPPS,mx=20000)
print "MLEH: "+str(MLEH)
print "MAPH: "+str(MAPH)
G = GPdc.GPcore(X,Y,S,D,GPdc.kernel(GPdc.SQUEXPPS,1,sp.array(MAPH)))



print G.llk()

np=180
sup = sp.linspace(-1,1,np)
Example #50
0
X = ESutils.draw_support(2, sp.array([-2,-1]),sp.array([0,3]),500,ESutils.SUPPORT_UNIFORM)
for i in xrange(X.shape[0]):
    plt.plot(X[i,0],X[i,1],'r.')
plt.axis([-5,5,-5,5])


#2d gp test



nt=34
X = ESutils.draw_support(2, sp.array([-1.,-1.]),sp.array([1.,1.]),nt,ESutils.SUPPORT_UNIFORM)
D = [[sp.NaN]]*(nt)
hyp = sp.array([1.5,0.25,0.25])
kf = GPdc.gen_sqexp_k_d(hyp)
Kxx = GPdc.buildKsym_d(kf,X,D)
Y = spl.cholesky(Kxx,lower=True)*sp.matrix(sps.norm.rvs(0,1.,nt)).T+sp.matrix(sps.norm.rvs(0,1e-3,nt)).T
S = sp.matrix([1e-6]*nt).T

lb = sp.array([-2.,-2.,-2.])
ub = sp.array([2.,2.,2.])
#MLEH =  GPdc.searchMLEhyp(X,Y,S,D,lb,ub,GPdc.SQUEXP,mx=10000)
G = GPdc.GPcore(X,Y,S,D,GPdc.kernel(GPdc.SQUEXP,2,sp.array([1.5,0.15,0.15])))
#np=180
#sup = sp.linspace(-1,1,np)
#Dp = [[sp.NaN]]*np
#Xp = sp.vstack([sp.array([i]) for i in sup])
#[m,v] = G.infer_diag(Xp,Dp)
#a0.plot(sup,m)
#sq = sp.sqrt(v)
Example #51
0
ns = 200
sup = sp.linspace(-1, 1, 200)

#points are a high noise obs, a low noise obs, a derivative obs and a second derivative obs
X = sp.array([[-0.8], [-0.25], [0.25], [0.8]])
Y = sp.array([[0.3], [-0.2], [2.5], [50.]])
S = sp.array([[1e-1], [1e-6], [1e-6], [1e-6]])
D = [[sp.NaN], [sp.NaN], [0], [0, 0]]

a[0].plot([-0.8, -0.8], [0.3 - sp.sqrt(1e-1), 0.3 + sp.sqrt(1e-1)], 'r')
a[0].plot([-0.8], [0.3], 'ro')
a[0].plot([-0.25], [-0.2], 'ro')
a[1].plot([0.25], [2.5], 'ro')
a[2].plot([0.8], [50], 'ro')

k = GPdc.kernel(GPdc.SQUEXP, 1, sp.array([0.5, 0.2]))
K = sp.empty([4, 4])
for i in xrange(4):
    for j in xrange(i, 4):
        K[i, j] = K[j, i] = k(X[i, :], X[j, :], D[i], D[j])
    K[i, i] += 1e-6

g = GPdc.GPcore(X, Y, S, D, GPdc.kernel(GPdc.SQUEXP, 1, sp.array([0.5, 0.2])))
#g.printc()
C = g.get_cho()
print C

print spl.cho_solve((C, True), sp.eye(4)).dot(K)
for i, d in enumerate([[sp.NaN], [0], [0, 0]]):
    m, v = g.infer_diag(sup, [d] * ns)
    vl = (m - sp.sqrt(v)).flatten()
Example #52
0
X = sp.vstack([X, [sp.array([i, -0.3]) for i in x]])

Y = sp.matrix(y).T
#X = sp.matrix([[0.,-9.],[0.2,5.],[0.4,12.],[0.6,3.],[0.8,9.]])

#Y = sp.matrix([0.2,0.1,0.,-0.15,-0.3]).T

D = [[sp.NaN]] * (X.shape[0])
S = sp.matrix([0.005**2] * X.shape[0]).T
f0 = plt.figure()
a0 = plt.subplot(111)
a0.plot(sp.array(X[:, 0]).flatten(), Y, 'g.')

lb = sp.array([-2., -1., -2., -2., -2.])
ub = sp.array([2., 1., 2., 2., 2.])
MLEH = GPdc.searchMLEhyp(X, Y, S, D, lb, ub, GPdc.LINXSQUEXP, mx=10000)
print "xxx"
GPdc.kernel(GPdc.LINXSQUEXP, 2, MLEH)
print "yyyy"
print MLEH
G = GPdc.GPcore(X, Y, S, D, GPdc.kernel(GPdc.LINXSQUEXP, 2, MLEH))
print G.llk()

np = 180
sup = sp.linspace(-1, 1, np)
Dp = [[sp.NaN]] * np
Xp = sp.vstack([sp.array([i, -0.3]) for i in sup])

[m, v] = G.infer_diag(Xp, Dp)
a0.plot(sup, m)
sq = sp.sqrt(v)
Example #53
0
H = sp.empty([np, 1])
T = sp.empty([np, 1])
for i in xrange(np):
    [H[i, 0], T[i, 0]] = L.llks(sp.array([1.3, 0.13, 0.2, 1e-2]), int(X[i, 0]))

#lb = sp.array([0.,0.,-4.,-0.5*float(nf),float(nf)])
#ub = sp.array([4.,3.,3.,0.,1.5*float(nf)])
#MLEH =  GPdc.searchMLEhyp(X,H,sp.zeros([np,1]),[[sp.NaN]]*(np),lb,ub,GPdc.SQUEXPPS,mx=10000)
#G = GPdc.GPcore(X.copy(),H,sp.zeros([np,1]),[[sp.NaN]]*(np),GPdc.kernel(GPdc.SQUEXPPS,1,sp.array(MLEH)))
lb = sp.array([0., 0., -4., -1., -3.])
ub = sp.array([4., 3., 3., 0.5, 3.])
MLEH = GPdc.searchMLEhyp(1. / float(nf) * X,
                         H,
                         sp.zeros([np, 1]), [[sp.NaN]] * (np),
                         lb,
                         ub,
                         GPdc.SQUEXPBS,
                         mx=10000)
G = GPdc.GPcore(1. / float(nf) * X.copy(), H, sp.zeros([np,
                                                        1]), [[sp.NaN]] * (np),
                GPdc.kernel(GPdc.SQUEXPBS, 1, sp.array(MLEH)))

[m, v] = G.infer_diag(1. / float(nf) * X, [[sp.NaN]] * (np))

S = sp.empty([np, 1])
for i in xrange(np):
    S[i, 0] = MLEH[2] * ((1. / float(nf) * X[i, 0])**(MLEH[3] * MLEH[4])) * (
        (1. - 1. / float(nf) * X[i, 0])**(MLEH[3] * (1. - MLEH[4])))

lbc = sp.array([-4., 0., -6.])
Example #54
0
ub = sp.array([1.] * d)
[X, Y, S, D] = ESutils.gen_dataset(nt,
                                   d,
                                   lb,
                                   ub,
                                   GPdc.SQUEXP,
                                   sp.array([0.9, 0.25]),
                                   s=1e-8)
S *= 0.
f0 = plt.figure()
a0 = plt.subplot(111)
a0.plot(sp.array(X[:, 0]).flatten(), Y, 'g.')

lb = sp.array([-2., -2., -9])
ub = sp.array([2., 2., -1])
MLEH = GPdc.searchMLEhyp(X, Y, S, D, lb, ub, GPdc.SQUEXPCS, mx=10000)

mprior = sp.array([0., -1., -5.])
sprior = sp.array([1., 1., 3.])

MAPH = GPdc.searchMAPhyp(X, Y, S, D, mprior, sprior, GPdc.SQUEXPCS, mx=10000)
print "MLEH: " + str(MLEH)
print "MAPH: " + str(MAPH)
G = GPdc.GPcore(X, Y, S, D, GPdc.kernel(GPdc.SQUEXPCS, 1, sp.array(MLEH)))

print G.llk()

np = 180
sup = sp.linspace(-1, 1, np)
Dp = [[sp.NaN]] * np
Xp = sp.vstack([sp.array([i]) for i in sup])
Example #55
0
ns = 200
sup = sp.linspace(-1,1,200)

#points are a high noise obs, a low noise obs, a derivative obs and a second derivative obs
X = sp.array([[-0.8],[-0.25],[0.25],[0.8]])
Y = sp.array([[0.3],[-0.2],[2.5],[50.]])
S = sp.array([[1e-1],[1e-6],[1e-6],[1e-6]])
D = [[sp.NaN],[sp.NaN],[0],[0,0]]

a[0].plot([-0.8,-0.8],[0.3-sp.sqrt(1e-1),0.3+sp.sqrt(1e-1)],'r')
a[0].plot([-0.8],[0.3],'ro')
a[0].plot([-0.25],[-0.2],'ro')
a[1].plot([0.25],[2.5],'ro')
a[2].plot([0.8],[50],'ro')

k= GPdc.kernel(GPdc.SQUEXP,1,sp.array([0.5,0.2]))
K = sp.empty([4,4])
for i in xrange(4):
    for j in xrange(i,4):
        K[i,j] =K[j,i] = k(X[i,:],X[j,:],D[i],D[j])
    K[i,i]+=1e-6

    
g = GPdc.GPcore(X,Y,S,D,GPdc.kernel(GPdc.SQUEXP,1,sp.array([0.5,0.2])))
#g.printc()
C= g.get_cho()
print C

print spl.cho_solve((C,True),sp.eye(4)).dot(K)
for i,d in enumerate([[sp.NaN],[0],[0,0]]):
    m,v = g.infer_diag(sup,[d]*ns)
# To change this license header, choose License Headers in Project Properties.
# To change this template file, choose Tools | Templates
# and open the template in the editor.

from scipy import stats as sps
from scipy import linalg as spl
import scipy as sp
from matplotlib import pyplot as plt

import GPdc

hyp = sp.array([1.5,0.25])
kf = GPdc.gen_sqexp_k_d(hyp)
nt=18
x = sp.linspace(-1,1,nt)
Dtmp = [[sp.NaN]]*nt
Kxx = GPdc.buildKsym_d(kf,sp.matrix(x).T,Dtmp)

Z = spl.cholesky(Kxx,lower=True)*sp.matrix(sps.norm.rvs(0,1.,nt)).T
Z = sp.vstack([Z,spl.cholesky(Kxx,lower=True)*sp.matrix(sps.norm.rvs(0,1.,nt)).T])
Z = sp.vstack([Z,spl.cholesky(Kxx,lower=True)*sp.matrix(sps.norm.rvs(0,1.,nt)).T])


y = [-0.4*(i-0.2)+sps.norm.rvs(scale=0.005) for i in x]
y+=[-0.6*(i+0.2)+sps.norm.rvs(scale=0.005) for i in x]
y+=[0.1*(i+0.8)+sps.norm.rvs(scale=0.005) for i in x]
X = sp.vstack([sp.array([i,0.]) for i in x])
X = sp.vstack([X,[sp.array([i,0.4]) for i in x]])
X = sp.vstack([X,[sp.array([i,-0.3]) for i in x]])

Y = sp.matrix(y).T+Z
Example #57
0
def traincfn(x, c):
    n = x.size
    g = GPdc.GPcore(x, c, sp.array([1e-1] * n), [[sp.NaN]] * n,
                    GPdc.kernel(GPdc.MAT52, 1, [1., 0.2]))

    return cfnobj(g)