Information-theoretic analysis of epistemic uncertainty in Bayesian meta-learning

Sharu Jose, Sangwoo Park, Osvaldo Simeone

Research output: Chapter in Book/Report/Conference proceedingConference contribution

Abstract

The overall predictive uncertainty of a trained predictor can be decomposed into separate contributions due to epistemic and aleatoric uncertainty. Under a Bayesian formulation, assuming a well-specified model, the two contributions can be exactly expressed (for the log-loss) or bounded (for more general losses) in terms of information-theoretic quantities (Xu and Raginsky [2020]). This paper addresses the study of epistemic uncertainty within an information-theoretic framework in the broader setting of Bayesian meta-learning. A general hierarchical Bayesian model is assumed in which hyperparameters determine the per-task priors of the model parameters. Exact characterizations (for the log-loss) and bounds (for more general losses) are derived for the epistemic uncertainty – quantified by the minimum excess meta-risk (MEMR)– of optimal meta-learning rules. This characterization is leveraged to bring insights into the dependence of the epistemic uncertainty on the number of tasks and on the amount of per-task training data. Experiments are presented that use the proposed information-theoretic bounds, evaluated via neural mutual information estimators, to compare the performance of conventional learning and meta-learning as the number of meta-learning tasks increases.
Original languageEnglish
Title of host publicationInternational Conference on Artificial Intelligence and Statistics, 28-30 March 2022, A Virtual Conference
EditorsGustau Camps-Valls, Francisco J. R. Ruiz, Isabel Valera
PublisherProceedings of Machine Learning Research
Pages9758-9775
Number of pages18
Publication statusPublished - 3 May 2022
EventThe 25th International Conference on Artificial Intelligence and Statistics - Virtual Conference
Duration: 28 Mar 202230 Mar 2022

Publication series

NameProceedings of Machine Learning Research
Volume151
ISSN (Electronic)2640-3498

Conference

ConferenceThe 25th International Conference on Artificial Intelligence and Statistics
Abbreviated titleAISTATS 2022
Period28/03/2230/03/22

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