Fast swap regret minimization and applications
Wed 13.08 11:30 - 12:30
- Game Theory Seminar
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Bloomfield, Room 424
Abstract:
We give a simple and computationally efficient algorithm that, for any constant ε>0, obtains εT-swap regret within only T = \polylog(n) rounds; this is an exponential improvement compared to the super-linear number of rounds required by the state-of-the-art algorithm, and resolves the main open problem of [Blum & Mansour '07]. Our algorithm has an exponential dependence on ε, but we prove a new, matching lower bound.
Our algorithm for swap regret implies faster convergence to ε-Correlated Equilibrium (ε-CE) in several regimes, resolving open problems from [Von Stengel & Forges '08, Babichenko & Rubinstein '17, Ganor & Karthik '18, Babichenko '20, Fujii '23].
In follow up work our algorithm has already been used to design new learning algorithm for Principal-Agents problems [Collina, Gupta, Roth '24], and a new efficient algorithm for high dimensional calibration [Peng '25] (the latter result resolves open questions by [Abernethy & Mannor '11, Hazan & Kakade '12]).

