Deep Bayes Factors
Jungeum Kim, Veronika Rockova

TL;DR
This paper introduces a deep learning-based estimator for Bayes factors that is likelihood-free, fast, and capable of providing full distributional insights, improving model comparison in Bayesian statistics.
Contribution
It proposes a novel deep learning method for estimating Bayes factors without summary statistics, with proven consistency and enhanced interpretability over traditional approaches.
Findings
Performs competitively with MCMC methods requiring likelihoods
Enables rapid evaluation of Bayes factors for simulated data
Provides full distributional analysis of Bayes factors
Abstract
The is no other model or hypothesis verification tool in Bayesian statistics that is as widely used as the Bayes factor. We focus on generative models that are likelihood-free and, therefore, render the computation of Bayes factors (marginal likelihood ratios) far from obvious. We propose a deep learning estimator of the Bayes factor based on simulated data from two competing models using the likelihood ratio trick. This estimator is devoid of summary statistics and obviates some of the difficulties with ABC model choice. We establish sufficient conditions for consistency of our Deep Bayes Factor estimator as well as its consistency as a model selection tool. We investigate the performance of our estimator on various examples using a wide range of quality metrics related to estimation and model decision accuracy. After training, our deep learning approach enables rapid evaluations of…
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Taxonomy
TopicsBayesian Methods and Mixture Models · Gaussian Processes and Bayesian Inference · Machine Learning and Algorithms
MethodsFocus · Approximate Bayesian Computation
