Non-Stationary Bandits under Recharging Payoffs: Improved Planning with Sublinear Regret
May 29, 2022 ยท Declared Dead ยท ๐ Neural Information Processing Systems
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Authors
Orestis Papadigenopoulos, Constantine Caramanis, Sanjay Shakkottai
arXiv ID
2205.14790
Category
cs.LG: Machine Learning
Cross-listed
cs.DS
Citations
5
Venue
Neural Information Processing Systems
Last Checked
4 months ago
Abstract
The stochastic multi-armed bandit setting has been recently studied in the non-stationary regime, where the mean payoff of each action is a non-decreasing function of the number of rounds passed since it was last played. This model captures natural behavioral aspects of the users which crucially determine the performance of recommendation platforms, ad placement systems, and more. Even assuming prior knowledge of the mean payoff functions, computing an optimal planning in the above model is NP-hard, while the state-of-the-art is a $1/4$-approximation algorithm for the case where at most one arm can be played per round. We first focus on the setting where the mean payoff functions are known. In this setting, we significantly improve the best-known guarantees for the planning problem by developing a polynomial-time $(1-{1}/{e})$-approximation algorithm (asymptotically and in expectation), based on a novel combination of randomized LP rounding and a time-correlated (interleaved) scheduling method. Furthermore, our algorithm achieves improved guarantees -- compared to prior work -- for the case where more than one arm can be played at each round. Moving to the bandit setting, when the mean payoff functions are initially unknown, we show how our algorithm can be transformed into a bandit algorithm with sublinear regret.
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