https://github.com/GPflow/GPflow
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Tip revision: 6bc57345a42f589fb1ce559ba47d1c667581e4ed authored by thevincentadam on 16 April 2018, 14:55:16 UTC
a first mixedmok test (#706)
Tip revision: 6bc5734
reference.py
import numpy as np

def referenceRbfKernel(X, lengthScale, signalVariance):
    nDataPoints, _ = X.shape
    kernel = np.zeros((nDataPoints, nDataPoints))
    for row_index in range(nDataPoints):
        for column_index in range(nDataPoints):
            vecA = X[row_index,:]
            vecB = X[column_index,:]
            delta = vecA - vecB
            distanceSquared = np.dot(delta.T, delta)
            kernel[row_index, column_index] = signalVariance * np.exp(-0.5 * distanceSquared / lengthScale**2)
    return kernel


def referenceArcCosineKernel( X, order, weightVariances, biasVariance, signalVariance ):
    num_points = X.shape[0]
    kernel = np.empty((num_points, num_points))
    for row in range(num_points):
        for col in range(num_points):
            x = X[row]
            y = X[col]

            numerator = (weightVariances * x).dot(y) + biasVariance

            x_denominator = np.sqrt((weightVariances * x).dot(x) + biasVariance)
            y_denominator = np.sqrt((weightVariances * y).dot(y) + biasVariance)
            denominator = x_denominator * y_denominator

            theta = np.arccos(np.clip(numerator / denominator, -1., 1.))
            if order == 0:
                J = np.pi - theta
            elif order == 1:
                J = np.sin(theta) + (np.pi - theta) * np.cos(theta)
            elif order == 2:
                J = 3. * np.sin(theta) * np.cos(theta)
                J += (np.pi - theta) * (1. + 2. * np.cos(theta) ** 2)

            kernel[row, col] = signalVariance * (1. / np.pi) * J * \
                               x_denominator ** order * \
                               y_denominator ** order
    return kernel


def referencePeriodicKernel( X, lengthScale, signalVariance, period ):
    # Based on the GPy implementation of standard_period kernel
    base = np.pi * (X[:, None, :] - X[None, :, :]) / period
    exp_dist = np.exp( -0.5* np.sum( np.square(  np.sin( base ) / lengthScale ), axis = -1 ) )
    return signalVariance * exp_dist
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