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MNL-Bandit in non-stationary environments

MNL-Bandit in non-stationary environments

来源:Arxiv_logoArxiv
英文摘要

In this paper, we study the MNL-Bandit problem in a non-stationary environment and present an algorithm with a worst-case expected regret of $\tilde{O}\left( \min \left\{ \sqrt{NTL}\;,\; N^{\frac{1}{3}}(\Delta_{\infty}^{K})^{\frac{1}{3}} T^{\frac{2}{3}} + \sqrt{NT}\right\}\right)$. Here $N$ is the number of arms, $L$ is the number of changes and $\Delta_{\infty}^{K}$ is a variation measure of the unknown parameters. Furthermore, we show matching lower bounds on the expected regret (up to logarithmic factors), implying that our algorithm is optimal. Our approach builds upon the epoch-based algorithm for stationary MNL-Bandit in Agrawal et al. 2016. However, non-stationarity poses several challenges and we introduce new techniques and ideas to address these. In particular, we give a tight characterization for the bias introduced in the estimators due to non stationarity and derive new concentration bounds.

Varun Gupta、Ayoub Foussoul、Vineet Goyal

计算技术、计算机技术

Varun Gupta,Ayoub Foussoul,Vineet Goyal.MNL-Bandit in non-stationary environments[EB/OL].(2023-03-04)[2025-05-13].https://arxiv.org/abs/2303.02504.点此复制

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