NeurIPS2024
Efficient -Regret Minimization with Low-Degree Swap Deviations in Extensive-Form Games
Brian Hu Zhang, Ioannis Anagnostides, Gabriele Farina, Tuomas Sandholm
摘要
Recent breakthrough results by Dagan, Daskalakis, Fishelson and Golowich [2023] and Peng and Rubinstein [2023] established an efficient algorithm attaining at most swap regret over extensive-form strategy spaces of dimension in rounds. On the other extreme, Farina and Pipis [2023] developed an efficient algorithm for minimizing the weaker notion of linear-swap regret in rounds. In this paper, we develop efficient parameterized algorithms for regimes between these two extremes. We introduce the set of -mediator deviations, which generalize the untimed communication deviations recently introduced by Zhang, Farina and Sandholm [2024] to the case of having multiple mediators, and we develop algorithms for minimizing the regret with respect to this set of deviations in rounds. Moreover, by relating -mediator deviations to low-degree polynomials, we show that regret minimization against degree- polynomial swap deviations is achievable in rounds, where is the depth of the game, assuming a constant branching factor. For a fixed degree , this is polynomial for Bayesian games and quasipolynomial more broadly when -- the usual balancedness assumption on the game tree.