GPy/GPy/models/dpgplvm.py
2015-06-23 01:26:52 -07:00

19 lines
1.1 KiB
Python

# Copyright (c) 2015 the GPy Austhors (see AUTHORS.txt)
# Licensed under the BSD 3-clause license (see LICENSE.txt)
import numpy as np
from .. import kern
from .bayesian_gplvm import BayesianGPLVM
from ..core.parameterization.variational import NormalPosterior, NormalPrior
class DPBayesianGPLVM(BayesianGPLVM):
"""
Bayesian Gaussian Process Latent Variable Model with Descriminative prior
"""
def __init__(self, Y, input_dim, X_prior, X=None, X_variance=None, init='PCA', num_inducing=10,
Z=None, kernel=None, inference_method=None, likelihood=None,
name='bayesian gplvm', mpi_comm=None, normalizer=None,
missing_data=False, stochastic=False, batchsize=1):
super(DPBayesianGPLVM,self).__init__(Y=Y, input_dim=input_dim, X=X, X_variance=X_variance, init=init, num_inducing=num_inducing, Z=Z, kernel=kernel, inference_method=inference_method, likelihood=likelihood, mpi_comm=mpi_comm, normalizer=normalizer, missing_data=missing_data, stochastic=stochastic, batchsize=batchsize, name='dp bayesian gplvm')
self.X.mean.set_prior(X_prior)
self.link_parameter(X_prior)