# Copyright (c) 2014, James Hensman, Alan Saul
# Licensed under the BSD 3-clause license (see LICENSE.txt)
import numpy as np
from ..core import GP
from ..core.parameterization.param import Param
from ..inference.latent_function_inference import VarGauss
log_2_pi = np.log(2*np.pi)
[docs]class GPVariationalGaussianApproximation(GP):
"""
The Variational Gaussian Approximation revisited
.. rubric:: References
.. [opper_archambeau_2009] Opper, M.; Archambeau, C.; The Variational Gaussian Approximation Revisited. Neural Comput. 2009, pages 786-792.
"""
def __init__(self, X, Y, kernel, likelihood, Y_metadata=None):
num_data = Y.shape[0]
self.alpha = Param('alpha', np.zeros((num_data,1))) # only one latent fn for now.
self.beta = Param('beta', np.ones(num_data))
inf = VarGauss(self.alpha, self.beta)
super(GPVariationalGaussianApproximation, self).__init__(X, Y, kernel, likelihood, name='VarGP', inference_method=inf, Y_metadata=Y_metadata)
self.link_parameter(self.alpha)
self.link_parameter(self.beta)