A General Recipe for the Analysis of Randomized Multi-Armed Bandit
Algorithms
- URL: http://arxiv.org/abs/2303.06058v2
- Date: Thu, 21 Dec 2023 14:11:00 GMT
- Title: A General Recipe for the Analysis of Randomized Multi-Armed Bandit
Algorithms
- Authors: Dorian Baudry and Kazuya Suzuki and Junya Honda
- Abstract summary: We revisit two famous bandit algorithms, Minimum Empirical Divergence (MED) and Thompson Sampling (TS)
We prove that MED is optimal for all these models, but also provide a simple regret analysis of some TS algorithms for which the optimality is already known.
- Score: 16.114012813668932
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: In this paper we propose a general methodology to derive regret bounds for
randomized multi-armed bandit algorithms. It consists in checking a set of
sufficient conditions on the sampling probability of each arm and on the family
of distributions to prove a logarithmic regret. As a direct application we
revisit two famous bandit algorithms, Minimum Empirical Divergence (MED) and
Thompson Sampling (TS), under various models for the distributions including
single parameter exponential families, Gaussian distributions, bounded
distributions, or distributions satisfying some conditions on their moments. In
particular, we prove that MED is asymptotically optimal for all these models,
but also provide a simple regret analysis of some TS algorithms for which the
optimality is already known. We then further illustrate the interest of our
approach, by analyzing a new Non-Parametric TS algorithm (h-NPTS), adapted to
some families of unbounded reward distributions with a bounded h-moment. This
model can for instance capture some non-parametric families of distributions
whose variance is upper bounded by a known constant.
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