Cristina Cornelio, Judy Goldsmith, et al.
JAIR
No-regret learning has a long history of being closely connected to game theory. Recent works have devised uncoupled no-regret learning dynamics that, when adopted by all the players in normal-form games, converge to various equilibrium solutions at a near-optimal rate of , a significant improvement over the rate of classic no-regret learners. However, analogous convergence results are scarce in Markov games, a more generic setting that lays the foundation for multi-agent reinforcement learning. In this work, we close this gap by showing that the optimistic-follow-the-regularized-leader (OFTRL) algorithm, together with appropriate value update procedures, can find -approximate (coarse) correlated equilibria in full-information general-sum Markov games within iterations. Numerical results are also included to corroborate our theoretical findings.
Cristina Cornelio, Judy Goldsmith, et al.
JAIR
Hannaneh Hajishirzi, Julia Hockenmaier, et al.
UAI 2011
Leonid Karlinsky, Joseph Shtok, et al.
CVPR 2019
C.A. Micchelli, W.L. Miranker
Journal of the ACM