Litcius/Paper detail

Challenges in Markov Chain Monte Carlo for Bayesian Neural Networks

Theodore Papamarkou, Jacob Hinkle, M. Todd Young, David E. Womble

2022Statistical Science56 citationsDOIOpen Access PDF

Abstract

Markov chain Monte Carlo (MCMC) methods have not been broadly adopted in Bayesian neural networks (BNNs). This paper initially reviews the main challenges in sampling from the parameter posterior of a neural network via MCMC. Such challenges culminate to lack of convergence to the parameter posterior. Nevertheless, this paper shows that a nonconverged Markov chain, generated via MCMC sampling from the parameter space of a neural network, can yield via Bayesian marginalization a valuable posterior predictive distribution of the output of the neural network. Classification examples based on multilayer perceptrons showcase highly accurate posterior predictive distributions. The postulate of limited scope for MCMC developments in BNNs is partially valid; an asymptotically exact parameter posterior seems less plausible, yet an accurate posterior predictive distribution is a tenable research avenue.

Topics & Concepts

Markov chain Monte CarloPosterior probabilityComputer scienceBayesian probabilityArtificial neural networkMetropolis–Hastings algorithmArtificial intelligenceMachine learningMarkov chainGaussian Processes and Bayesian InferenceBayesian Methods and Mixture ModelsStatistical Methods and Inference
Challenges in Markov Chain Monte Carlo for Bayesian Neural Networks | Litcius