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Variational Entropy Search for Adjusting Expected Improvement

Authors :
Cheng, Nuojin
Becker, Stephen
Publication Year :
2024

Abstract

Bayesian optimization is a widely used technique for optimizing black-box functions, with Expected Improvement (EI) being the most commonly utilized acquisition function in this domain. While EI is often viewed as distinct from other information-theoretic acquisition functions, such as entropy search (ES) and max-value entropy search (MES), our work reveals that EI can be considered a special case of MES when approached through variational inference (VI). In this context, we have developed the Variational Entropy Search (VES) methodology and the VES-Gamma algorithm, which adapts EI by incorporating principles from information-theoretic concepts. The efficacy of VES-Gamma is demonstrated across a variety of test functions and read datasets, highlighting its theoretical and practical utilities in Bayesian optimization scenarios.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2402.11345
Document Type :
Working Paper