We discuss the expectation propagation (EP) algorithm for approximate Bayesian inference using a factorizing posterior approximation. For neural network models, we use a central limit theorem argument to make EP tractable when the number of parameters is large. For two types of models, we show that EP can achieve optimal generalization performance when data are drawn from a simple distribution
Many models of interest in the natural and social sciences have no closed-form likelihood function, ...
Abstract. We present a framework for efficient, accurate approximate Bayesian inference in generaliz...
International audienceExpectation Propagation (Minka, 2001) is a widely successful algorithm for var...
We discuss the expectation propagation (EP) algorithm for approximate Bayesian inference using a fac...
Analyzing latent Gaussian models by using approximate Bayesian inference methods has proven to be a ...
This is the final version of the article. It first appeared from Neural Information Processing Syste...
© 2018 Australian Statistical Publishing Association Inc. Published by John Wiley & Sons Australia P...
Contains fulltext : 62669.pdf (author's version ) (Open Access
We discuss the integration of the expectation-maximization (EM) algorithm for maximum likelihood lea...
Expectation propagation (EP) is a widely successful algorithm for variational inference. EP is an it...
We present a novel method for approximate inference in Bayesian models and regularized risk function...
We describe how a deterministic Gaussian posterior approximation can be constructed using expectatio...
Factor graphs provide a convenient framework for automatically generating (approximate) Bayesian inf...
We propose a novel algorithm to solve the expectation propagation relaxation of Bayesian inference f...
Bayesian learning is often hampered by large computational expense. As a powerful generalization of ...
Many models of interest in the natural and social sciences have no closed-form likelihood function, ...
Abstract. We present a framework for efficient, accurate approximate Bayesian inference in generaliz...
International audienceExpectation Propagation (Minka, 2001) is a widely successful algorithm for var...
We discuss the expectation propagation (EP) algorithm for approximate Bayesian inference using a fac...
Analyzing latent Gaussian models by using approximate Bayesian inference methods has proven to be a ...
This is the final version of the article. It first appeared from Neural Information Processing Syste...
© 2018 Australian Statistical Publishing Association Inc. Published by John Wiley & Sons Australia P...
Contains fulltext : 62669.pdf (author's version ) (Open Access
We discuss the integration of the expectation-maximization (EM) algorithm for maximum likelihood lea...
Expectation propagation (EP) is a widely successful algorithm for variational inference. EP is an it...
We present a novel method for approximate inference in Bayesian models and regularized risk function...
We describe how a deterministic Gaussian posterior approximation can be constructed using expectatio...
Factor graphs provide a convenient framework for automatically generating (approximate) Bayesian inf...
We propose a novel algorithm to solve the expectation propagation relaxation of Bayesian inference f...
Bayesian learning is often hampered by large computational expense. As a powerful generalization of ...
Many models of interest in the natural and social sciences have no closed-form likelihood function, ...
Abstract. We present a framework for efficient, accurate approximate Bayesian inference in generaliz...
International audienceExpectation Propagation (Minka, 2001) is a widely successful algorithm for var...