Assessing Approximate Inference for Binary Gaussian Process Classification 论文

2005Journal of Machine Learning Research引用 247
Gaussian Processes and Bayesian InferenceMachine Learning and AlgorithmsTarget Tracking and Data Fusion in Sensor Networks

摘要

Gaussian process priors can be used to define flexible, probabilistic classification models. Unfortunately exact Bayesian inference is analytically intractable and various approximation techniques have been proposed. In this work we review and compare Laplace's method and Expectation Propagation for approximate Bayesian inference in the binary Gaussian process classification model. We present a comprehensive comparison of the approximations, their predictive performance and marginal likelihood estimates to results obtained by MCMC sampling. We explain theoretically and corroborate empirically the advantages of Expectation Propagation compared to Laplace's method.