Example #1
0
        def fOdeDx(theta, x):
            theta = vector(theta)
            x = matrix(x)

            resultDx = np.zeros(
                shape=[np.shape(x)[0],
                       np.shape(x)[1],
                       np.shape(x)[1]])
            P = (x[:, 0])
            M = (x[:, 1])
            H = (x[:, 2])

            expMminusP = np.exp(M - P)
            dP = -np.power(1 + np.exp(2 * P), -2) * np.exp(2 * P) * 2

            resultDx[:, 0, 0] = -theta[1] * expMminusP
            resultDx[:, 1, 0] = theta[1] * expMminusP
            resultDx[:, 2, 0] = -theta[0] * np.exp(H)

            resultDx[:, 0, 1] = theta[4] * np.multiply(np.exp(-M), dP)
            resultDx[:, 1, 1] = -theta[4] * np.exp(-M) / (1 + np.exp(2 * P))

            resultDx[:, 0, 2] = -theta[0] * np.exp(P) + theta[5] * np.multiply(
                np.exp(-H), dP)
            resultDx[:, 2, 2] = -theta[5] * np.exp(-H) / (1 + np.exp(2 * P))

            return ArmaCube(resultDx.T.copy())
Example #2
0
        def fOde(theta, x):
            theta = vector(theta)
            x = matrix(x)

            V = x[:, 0]
            R = x[:, 1]

            Vdt = theta[2] * (V - pow(V, 3) / 3.0 + R)
            Rdt = -1.0 / theta[2] * (V - theta[0] + theta[1] * R)
            result = np.stack([Vdt, Rdt], axis=1)

            return ArmaMatrix(result.T.copy())
Example #3
0
        def fOdeDx(theta, x):
            theta = vector(theta)
            x = matrix(x)

            resultDx = np.zeros(
                shape=[np.shape(x)[0],
                       np.shape(x)[1],
                       np.shape(x)[1]])
            V = x[:, 0]
            R = x[:, 1]

            resultDx[:, 0, 0] = theta[2] * (1 - np.square(V))
            resultDx[:, 1, 0] = theta[2]
            resultDx[:, 0, 1] = -1.0 / theta[2]
            resultDx[:, 1, 1] = -1.0 * theta[1] / theta[2]
            return ArmaCube(resultDx.T.copy())
Example #4
0
        def fOde(theta, x):
            theta = vector(theta)
            x = matrix(x)

            P = np.exp(x[:, 0])
            M = np.exp(x[:, 1])
            H = np.exp(x[:, 2])

            PMHdt = np.zeros(shape=np.shape(x))
            PMHdt[:, 0] = -theta[0] * H + theta[1] * M / P - theta[2]
            PMHdt[:, 1] = -theta[3] + theta[4] / (1 + np.square(P)) / M
            PMHdt[:,
                  2] = -theta[0] * P + theta[5] / (1 +
                                                   np.square(P)) / H - theta[6]

            return ArmaMatrix(PMHdt.T.copy())
Example #5
0
        def fOdeDtheta(theta, x):
            theta = vector(theta)
            x = matrix(x)

            resultDtheta = np.zeros(
                shape=[np.shape(x)[0],
                       np.shape(theta)[0],
                       np.shape(x)[1]])
            V = x[:, 0]
            R = x[:, 1]

            resultDtheta[:, 2, 0] = V - pow(V, 3) / 3.0 + R
            resultDtheta[:, 0, 1] = 1.0 / theta[2]
            resultDtheta[:, 1, 1] = -R / theta[2]
            resultDtheta[:, 2, 1] = 1.0 / pow(
                theta[2], 2) * (V - theta[0] + theta[1] * R)

            return ArmaCube(resultDtheta.T.copy())
Example #6
0
        def fOdeDtheta(theta, x):
            theta = vector(theta)
            x = matrix(x)

            resultDtheta = np.zeros(
                shape=[np.shape(x)[0],
                       np.shape(theta)[0],
                       np.shape(x)[1]])
            P = (x[:, 0])
            M = (x[:, 1])
            H = (x[:, 2])

            resultDtheta[:, 0, 0] = -np.exp(H)
            resultDtheta[:, 1, 0] = np.exp(M - P)
            resultDtheta[:, 2, 0].fill(-1)

            resultDtheta[:, 3, 1].fill(-1)
            resultDtheta[:, 4, 1] = np.exp(-M) / (1 + np.exp(2 * P))

            resultDtheta[:, 0, 2] = -np.exp(P)
            resultDtheta[:, 5, 2] = np.exp(-H) / (1 + np.exp(2 * P))
            resultDtheta[:, 6, 2].fill(-1)

            return ArmaCube(resultDtheta.T.copy())
Example #7
0
 def fOde(theta, x):
     theta = vector(theta)
     x = matrix(x)
     return theta * x
Example #8
0
    def test_solve_fn(self):
        fn_system = OdeSystem()

        def fOde(theta, x):
            theta = vector(theta)
            x = matrix(x)

            V = x[:, 0]
            R = x[:, 1]

            Vdt = theta[2] * (V - pow(V, 3) / 3.0 + R)
            Rdt = -1.0 / theta[2] * (V - theta[0] + theta[1] * R)
            result = np.stack([Vdt, Rdt], axis=1)

            return ArmaMatrix(result.T.copy())

        def fOdeDx(theta, x):
            theta = vector(theta)
            x = matrix(x)

            resultDx = np.zeros(
                shape=[np.shape(x)[0],
                       np.shape(x)[1],
                       np.shape(x)[1]])
            V = x[:, 0]
            R = x[:, 1]

            resultDx[:, 0, 0] = theta[2] * (1 - np.square(V))
            resultDx[:, 1, 0] = theta[2]
            resultDx[:, 0, 1] = -1.0 / theta[2]
            resultDx[:, 1, 1] = -1.0 * theta[1] / theta[2]
            return ArmaCube(resultDx.T.copy())

        def fOdeDtheta(theta, x):
            theta = vector(theta)
            x = matrix(x)

            resultDtheta = np.zeros(
                shape=[np.shape(x)[0],
                       np.shape(theta)[0],
                       np.shape(x)[1]])
            V = x[:, 0]
            R = x[:, 1]

            resultDtheta[:, 2, 0] = V - pow(V, 3) / 3.0 + R
            resultDtheta[:, 0, 1] = 1.0 / theta[2]
            resultDtheta[:, 1, 1] = -R / theta[2]
            resultDtheta[:, 2, 1] = 1.0 / pow(
                theta[2], 2) * (V - theta[0] + theta[1] * R)

            return ArmaCube(resultDtheta.T.copy())

        fn_system.fOde = fOde
        fn_system.fOdeDx = fOdeDx
        fn_system.fOdeDtheta = fOdeDtheta
        fn_system.thetaLowerBound = ArmaVector(np.array([0, 0, 0]))
        fn_system.thetaUpperBound = ArmaVector(
            np.array([np.inf, np.inf, np.inf]))
        fn_system.name = "FN"
        fn_system.thetaSize = 3

        ydataV = [
            -0.86, -0.26, 2.14, 1.94, 1.63, 1.75, 1.92, 1.39, 1.29, 1.59, 0.63,
            0.78, -1.59, -1.92, -1.56, -1.58, -1.26, -1.34, -0.62, -0.39, 1.58,
            2.29, 1.69, 1.61, 1.88, 1.57, 1.28, 1.09, 1.21, 0.1, -1.66, -2.05,
            -1.55, -1.81, -1.72, -0.98, -0.77, -0.09, 1.87, 2.18, 1.67
        ]
        ydataR = [
            0.94, 0.87, 0.62, 0.44, 0.07, 0.02, -0.55, -0.09, -0.66, -0.73,
            -0.73, -0.63, -0.85, -0.55, 0.01, 0.43, 0.4, 0.57, 0.64, 1.26,
            1.09, 0.46, 0.13, 0.14, -0.3, -0.53, -0.5, -0.35, -1.03, -1.02,
            -0.6, -0.61, -0.05, 0.31, 0.82, 0.85, 0.64, 1.31, 0.78, 0.47, 0.35
        ]
        ydata = np.stack([np.array(ydataV), np.array(ydataR)], axis=1)
        tvecFull = np.linspace(0, 20, num=81)
        yFull = np.ndarray([81, 2])
        yFull.fill(np.nan)
        yFull[np.linspace(0, 80, num=41).astype(int), :] = ydata
        result_solver = solveMagiPy(
            yFull=ArmaMatrix(yFull).t(),
            odeModel=fn_system,
            tvecFull=ArmaVector(tvecFull),
            sigmaExogenous=ArmaVector(np.ndarray(0)),
            phiExogenous=ArmaMatrix(np.ndarray([0, 0])),
            xInitExogenous=ArmaMatrix(np.ndarray([0, 0])),
            thetaInitExogenous=ArmaVector(np.ndarray(0)),
            muExogenous=ArmaMatrix(np.ndarray([0, 0])),
            dotmuExogenous=ArmaMatrix(np.ndarray([0, 0])),
            priorTemperatureLevel=1.0,
            priorTemperatureDeriv=1.0,
            priorTemperatureObs=1.0,
            kernel="generalMatern",
            nstepsHmc=100,
            burninRatioHmc=0.5,
            niterHmc=1000,
            stepSizeFactorHmc=0.1,
            nEpoch=1,
            bandSize=20,
            useFrequencyBasedPrior=True,
            useBand=True,
            useMean=False,
            useScalerSigma=False,
            useFixedSigma=False,
            verbose=True)
        phiUsed = matrix(result_solver.phiAllDimensions)
        samplesCpp = matrix(result_solver.llikxthetasigmaSamples.slice(0))
Example #9
0
    def test_solve_hes1log(self):
        hes1_system = OdeSystem()

        def fOde(theta, x):
            theta = vector(theta)
            x = matrix(x)

            P = np.exp(x[:, 0])
            M = np.exp(x[:, 1])
            H = np.exp(x[:, 2])

            PMHdt = np.zeros(shape=np.shape(x))
            PMHdt[:, 0] = -theta[0] * H + theta[1] * M / P - theta[2]
            PMHdt[:, 1] = -theta[3] + theta[4] / (1 + np.square(P)) / M
            PMHdt[:,
                  2] = -theta[0] * P + theta[5] / (1 +
                                                   np.square(P)) / H - theta[6]

            return ArmaMatrix(PMHdt.T.copy())

        def fOdeDx(theta, x):
            theta = vector(theta)
            x = matrix(x)

            resultDx = np.zeros(
                shape=[np.shape(x)[0],
                       np.shape(x)[1],
                       np.shape(x)[1]])
            P = (x[:, 0])
            M = (x[:, 1])
            H = (x[:, 2])

            expMminusP = np.exp(M - P)
            dP = -np.power(1 + np.exp(2 * P), -2) * np.exp(2 * P) * 2

            resultDx[:, 0, 0] = -theta[1] * expMminusP
            resultDx[:, 1, 0] = theta[1] * expMminusP
            resultDx[:, 2, 0] = -theta[0] * np.exp(H)

            resultDx[:, 0, 1] = theta[4] * np.multiply(np.exp(-M), dP)
            resultDx[:, 1, 1] = -theta[4] * np.exp(-M) / (1 + np.exp(2 * P))

            resultDx[:, 0, 2] = -theta[0] * np.exp(P) + theta[5] * np.multiply(
                np.exp(-H), dP)
            resultDx[:, 2, 2] = -theta[5] * np.exp(-H) / (1 + np.exp(2 * P))

            return ArmaCube(resultDx.T.copy())

        def fOdeDtheta(theta, x):
            theta = vector(theta)
            x = matrix(x)

            resultDtheta = np.zeros(
                shape=[np.shape(x)[0],
                       np.shape(theta)[0],
                       np.shape(x)[1]])
            P = (x[:, 0])
            M = (x[:, 1])
            H = (x[:, 2])

            resultDtheta[:, 0, 0] = -np.exp(H)
            resultDtheta[:, 1, 0] = np.exp(M - P)
            resultDtheta[:, 2, 0].fill(-1)

            resultDtheta[:, 3, 1].fill(-1)
            resultDtheta[:, 4, 1] = np.exp(-M) / (1 + np.exp(2 * P))

            resultDtheta[:, 0, 2] = -np.exp(P)
            resultDtheta[:, 5, 2] = np.exp(-H) / (1 + np.exp(2 * P))
            resultDtheta[:, 6, 2].fill(-1)

            return ArmaCube(resultDtheta.T.copy())

        hes1_system.fOde = fOde
        hes1_system.fOdeDx = fOdeDx
        hes1_system.fOdeDtheta = fOdeDtheta
        hes1_system.thetaLowerBound = ArmaVector(
            np.array([0, 0, 0, 0, 0, 0, 0]))
        hes1_system.thetaUpperBound = ArmaVector(
            np.array([np.inf, np.inf, np.inf, np.inf, np.inf, np.inf, np.inf]))
        hes1_system.name = "Hes1-log"
        hes1_system.thetaSize = 7

        ydataP = [
            0.74, 0.78, 1.86, 1.86, 2.2, 1.93, 1.47, 1.03, 0.36, 0.88, 1.68,
            1.97, 2.15, 1.85, 1.8, 1.47, 0.71
        ]
        ydataM = [
            0.91, 0.82, 0.71, -0.11, 0.08, -0.45, -0.05, 0.2, 0.88, 1.09, 0.3,
            0.35, 0.25, -0.23, -0.51, -0.09
        ]
        yFull = np.ndarray([33, 3])
        yFull.fill(np.nan)
        yFull[np.linspace(0, 32, num=17).astype(int), 0] = ydataP
        yFull[np.linspace(1, 31, num=16).astype(int), 1] = ydataM

        tvecFull = np.linspace(0, 240, num=33)
        result_solver = solveMagiPy(
            yFull=ArmaMatrix(yFull).t(),
            odeModel=hes1_system,
            tvecFull=ArmaVector(tvecFull),
            sigmaExogenous=ArmaVector(np.array([0.15, 0.15, 0.15])),
            phiExogenous=ArmaMatrix(np.ndarray([0, 0])),
            xInitExogenous=ArmaMatrix(np.ndarray([0, 0])),
            thetaInitExogenous=ArmaVector(np.ndarray(0)),
            muExogenous=ArmaMatrix(np.ndarray([0, 0])),
            dotmuExogenous=ArmaMatrix(np.ndarray([0, 0])),
            priorTemperatureLevel=1.0,
            priorTemperatureDeriv=1.0,
            priorTemperatureObs=1.0,
            kernel="generalMatern",
            nstepsHmc=100,
            burninRatioHmc=0.5,
            niterHmc=1000,
            stepSizeFactorHmc=0.1,
            nEpoch=1,
            bandSize=20,
            useFrequencyBasedPrior=True,
            useBand=True,
            useMean=False,
            useScalerSigma=False,
            useFixedSigma=True,
            verbose=True)
        phiUsed = matrix(result_solver.phiAllDimensions)
        samplesCpp = matrix(result_solver.llikxthetasigmaSamples.slice(0))