ICLR2026
Bandits with Single-Peaked Preferences and Limited Resources
Omer Ben-Porat, Gur Keinan, Rotem Torkan
摘要
We study an online stochastic matching problem in which an algorithm sequentially matches users to arms, aiming to maximize cumulative reward over rounds under budget constraints. Without structural assumptions, computing the optimal matching is NP-hard, making online learning computationally infeasible. To overcome this barrier, we focus on single-peaked preferences---a well-established structure in social choice theory, where users' preferences are unimodal with respect to a common order over arms. We devise an efficient algorithm for the offline budgeted matching problem, and leverage it into an efficient online algorithm with a regret of . Our approach relies on a novel PQ tree-based order approximation method. If the single-peaked structure is known, we develop an efficient UCB-like algorithm that achieves a regret bound of .