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Non-Asymptotic Analysis of (Sticky) Track-and-Stop

28 May 2025
Riccardo Poiani
Martino Bernasconi
A. Celli
ArXiv (abs)PDFHTML
Main:9 Pages
Bibliography:2 Pages
Appendix:14 Pages
Abstract

In pure exploration problems, a statistician sequentially collects information to answer a question about some stochastic and unknown environment. The probability of returning a wrong answer should not exceed a maximum risk parameter δ\deltaδ and good algorithms make as few queries to the environment as possible. The Track-and-Stop algorithm is a pioneering method to solve these problems. Specifically, it is well-known that it enjoys asymptotic optimality sample complexity guarantees for δ→0\delta\to 0δ→0 whenever the map from the environment to its correct answers is single-valued (e.g., best-arm identification with a unique optimal arm). The Sticky Track-and-Stop algorithm extends these results to settings where, for each environment, there might exist multiple correct answers (e.g., ϵ\epsilonϵ-optimal arm identification). Although both methods are optimal in the asymptotic regime, their non-asymptotic guarantees remain unknown. In this work, we fill this gap and provide non-asymptotic guarantees for both algorithms.

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@article{poiani2025_2505.22475,
  title={ Non-Asymptotic Analysis of (Sticky) Track-and-Stop },
  author={ Riccardo Poiani and Martino Bernasconi and Andrea Celli },
  journal={arXiv preprint arXiv:2505.22475},
  year={ 2025 }
}
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