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Bayesian Anytime m-top Exploration

Book Contribution - Book Chapter Conference Contribution

We introduce Boundary Focused Thompson sampling (BFTS), a new Bayesian algorithm to solve the anytime m-top exploration problem, where the objective is to identify the m best arms in a multi-armed bandit. First, we consider a set of existing benchmark problems that consider sub-Gaussian reward distributions (i.e., Gaussian with fixed variance and categorical reward). Next, we introduce a new environment inspired by a real world decision problem concerning insect control for organic agriculture. This new environment encodes a Poisson rewards distribution. For all these benchmarks, we experimentally show that BFTS consistently outperforms AT-LUCB, the current state of the art algorithm.

Book: 2019 IEEE 31st International Conference on Tools with Artificial Intelligence (ICTAI)
Pages: 1422-1428
Number of pages: 7
ISBN:978-1-7281-3798-8
Publication year:2019
Accessibility:Open