Hedging Algorithms and Repeated Matrix Games

15 Oct 2018Bruno BouzyMarc MétivierDamien Pellier

Playing repeated matrix games (RMG) while maximizing the cumulative returns is a basic method to evaluate multi-agent learning (MAL) algorithms. Previous work has shown that $UCB$, $M3$, $S$ or $Exp3$ algorithms have good behaviours on average in RMG... (read more)

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