Lisa will present in the Best Paper Track at IJCAI!


Lisa will present in the Best Paper Track at IJCAI!

Our Paper on Efficient MCMC Sampling will be presented at the IJCAI's Sister Track for Best Research Papers!

Published on April 22, 2024 by Data Science @ LMU Munich

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Our paper ECML-PKDD Paper Towards Efficient MCMC Sampling in Bayesian Neural Networks by Exploiting Symmetry was accepted to be presented at IJCAI’s Sister Track for Best Research Papers.

Abstract

Bayesian inference in deep neural networks is challenging due to the high-dimensional, strongly multi-modal parameter posterior density landscape. Markov chain Monte Carlo approaches asymptotically recover the true posterior but are considered prohibitively expensive for large modern architectures. Local methods, which have emerged as a popular alternative, focus on specific parameter regions that can be approximated by functions with tractable integrals. While these often yield satisfactory empirical results, they fail, by definition, to account for the multi-modality of the parameter posterior. In this work, we argue that the dilemma between exact-but-unaffordable and cheap-but-inexact approaches can be mitigated by exploiting symmetries in the posterior landscape. Such symmetries, induced by neuron interchangeability and certain activation functions, manifest in different parameter values leading to the same functional output value. We show theoretically that the posterior predictive density in Bayesian neural networks can be restricted to a symmetry-free parameter reference set. By further deriving an upper bound on the number of Monte Carlo chains required to capture the functional diversity, we propose a straightforward approach for feasible Bayesian inference. Our experiments suggest that efficient sampling is indeed possible, opening up a promising path to accurate uncertainty quantification in deep learning.

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