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Revisiting Weighted Strategy for Non-stationary Parametric Bandits

5 March 2023
Jing Wang
Peng Zhao
Zhihong Zhou
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Abstract

Non-stationary parametric bandits have attracted much attention recently. There are three principled ways to deal with non-stationarity, including sliding-window, weighted, and restart strategies. As many non-stationary environments exhibit gradual drifting patterns, the weighted strategy is commonly adopted in real-world applications. However, previous theoretical studies show that its analysis is more involved and the algorithms are either computationally less efficient or statistically suboptimal. This paper revisits the weighted strategy for non-stationary parametric bandits. In linear bandits (LB), we discover that this undesirable feature is due to an inadequate regret analysis, which results in an overly complex algorithm design. We propose a refined analysis framework, which simplifies the derivation and importantly produces a simpler weight-based algorithm that is as efficient as window/restart-based algorithms while retaining the same regret as previous studies. Furthermore, our new framework can be used to improve regret bounds of other parametric bandits, including Generalized Linear Bandits (GLB) and Self-Concordant Bandits (SCB). For example, we develop a simple weighted GLB algorithm with an O~(kμ54cμ−34d34PT14T34)\widetilde{O}(k_\mu^{\frac{5}{4}} c_\mu^{-\frac{3}{4}} d^{\frac{3}{4}} P_T^{\frac{1}{4}}T^{\frac{3}{4}})O(kμ45​​cμ−43​​d43​PT41​​T43​) regret, improving the O~(kμ2cμ−1d910PT15T45)\widetilde{O}(k_\mu^{2} c_\mu^{-1}d^{\frac{9}{10}} P_T^{\frac{1}{5}}T^{\frac{4}{5}})O(kμ2​cμ−1​d109​PT51​​T54​) bound in prior work, where kμk_\mukμ​ and cμc_\mucμ​ characterize the reward model's nonlinearity, PTP_TPT​ measures the non-stationarity, ddd and TTT denote the dimension and time horizon.

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