Robust Variational Bayes by Min-Max Median Aggregation
Jiawei Yan, Ju Liu, Weidong Liu, Jiyuan Tu

TL;DR
This paper introduces a robust variational Bayes framework that uses min-max median aggregation to improve robustness against outliers and contamination, providing theoretical guarantees and better statistical rates.
Contribution
It develops a novel min-max median aggregation approach for variational Bayes, addressing robustness and establishing non-asymptotic statistical guarantees with local latent variables.
Findings
Achieves smaller approximation error than direct aggregation.
Provides nearly optimal statistical rate for the posterior mean.
Demonstrates effectiveness through extensive simulations.
Abstract
We propose a robust and scalable variational Bayes (VB) framework designed to effectively handle contamination and outliers in dataset. Our approach partitions the data into disjoint subsets and formulates a joint optimization problem based on robust aggregation principles. A key insight is that the full posterior distribution is equivalent to the minimizer of the mean Kullback-Leibler (KL) divergence from the -powered local posterior distributions. To enhance robustness, we replace the mean KL divergence with a min-max median formulation. The min-max formulation not only ensures consistency between the KL minimizer and the Evidence Lower Bound (ELBO) maximizer but also facilitates the establishment of improved statistical rates for the mean of variational posterior. We observe a notable discrepancy in the -powered marginal log likelihood function contingent on the presence of…
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Taxonomy
TopicsAdvanced Statistical Methods and Models · Statistical Methods and Inference · Bayesian Methods and Mixture Models
