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CO-BED: Information-Theoretic Contextual Optimization via Bayesian Experimental Design

Authors :
Ivanova, Desi R.
Jennings, Joel
Rainforth, Tom
Zhang, Cheng
Foster, Adam
Publication Year :
2023

Abstract

We formalize the problem of contextual optimization through the lens of Bayesian experimental design and propose CO-BED -- a general, model-agnostic framework for designing contextual experiments using information-theoretic principles. After formulating a suitable information-based objective, we employ black-box variational methods to simultaneously estimate it and optimize the designs in a single stochastic gradient scheme. In addition, to accommodate discrete actions within our framework, we propose leveraging continuous relaxation schemes, which can naturally be integrated into our variational objective. As a result, CO-BED provides a general and automated solution to a wide range of contextual optimization problems. We illustrate its effectiveness in a number of experiments, where CO-BED demonstrates competitive performance even when compared to bespoke, model-specific alternatives.<br />Comment: Proceedings of the 40th International Conference on Machine Learning (ICML 2023); 9 pages, 7 figures

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2302.14015
Document Type :
Working Paper