Multiplayer Information Asymmetric Contextual Bandits
- URL: http://arxiv.org/abs/2503.08961v1
- Date: Tue, 11 Mar 2025 23:48:31 GMT
- Title: Multiplayer Information Asymmetric Contextual Bandits
- Authors: William Chang, Yuanhao Lu,
- Abstract summary: We propose a novel multiplayer information asymmetric contextual bandit framework.<n>There are multiple players each with their own set of actions. At every round, they observe the same context vectors and simultaneously take an action from their own set of actions, giving rise to a joint action.<n>We propose a novel algorithm textttETC that is built on explore-then-commit principles to achieve the same optimal regret when both types of asymmetry are present.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Single-player contextual bandits are a well-studied problem in reinforcement learning that has seen applications in various fields such as advertising, healthcare, and finance. In light of the recent work on \emph{information asymmetric} bandits \cite{chang2022online, chang2023online}, we propose a novel multiplayer information asymmetric contextual bandit framework where there are multiple players each with their own set of actions. At every round, they observe the same context vectors and simultaneously take an action from their own set of actions, giving rise to a joint action. However, upon taking this action the players are subjected to information asymmetry in (1) actions and/or (2) rewards. We designed an algorithm \texttt{LinUCB} by modifying the classical single-player algorithm \texttt{LinUCB} in \cite{chu2011contextual} to achieve the optimal regret $O(\sqrt{T})$ when only one kind of asymmetry is present. We then propose a novel algorithm \texttt{ETC} that is built on explore-then-commit principles to achieve the same optimal regret when both types of asymmetry are present.
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