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Contextual Ranking and Selection with Gaussian Processes

Authors :
Cakmak, Sait
Gao, Siyang
Zhou, Enlu
Publication Year :
2022

Abstract

In many real world problems, we are faced with the problem of selecting the best among a finite number of alternatives, where the best alternative is determined based on context specific information. In this work, we study the contextual Ranking and Selection problem under a finite-alternative-finite-context setting, where we aim to find the best alternative for each context. We use a separate Gaussian process to model the reward for each alternative, and derive the large deviations rate function for both the expected and worst-case contextual probability of correct selection. We propose the GP-C-OCBA sampling policy, which uses the Gaussian process posterior to iteratively allocate observations to maximize the rate function. We prove its consistency and show that it achieves the optimal convergence rate under the assumption of a non-informative prior. Numerical experiments show that our algorithm is highly competitive in terms of sampling efficiency, while having significantly smaller computational overhead.<br />Comment: 25 pages, 4 figures. Preliminary version to be published at the Proceedings of the 2021 Winter Simulation Conference. Full version is currently under review

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2201.07782
Document Type :
Working Paper