The Variational Gaussian Approximation Revisited 论文

2008Neural Computation引用 302
Advanced Multi-Objective Optimization AlgorithmsMachine Learning and AlgorithmsGaussian Processes and Bayesian Inference

摘要

The variational approximation of posterior distributions by multivariate gaussians has been much less popular in the machine learning community compared to the corresponding approximation by factorizing distributions. This is for a good reason: the gaussian approximation is in general plagued by an Omicron(N)(2) number of variational parameters to be optimized, N being the number of random variables. In this letter, we discuss the relationship between the Laplace and the variational approximation, and we show that for models with gaussian priors and factorizing likelihoods, the number of variational parameters is actually Omicron(N). The approach is applied to gaussian process regression with nongaussian likelihoods.