Learning in Repeated Games without Repeating the Game
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Auteur(s)
Leoni, Patrick
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Texte intégral indisponibleDescrizione
"This paper extends the convergence result on Bayesian learning in Kalai and Lehrern(1993a, 1993b) to a class of games where players have a payoff function continuous for the product topology. Provided that 1) every player maximizes her expected payoff against her own beliefs, 2) every player updates her beliefs in a Bayesian manner, and 3) prior beliefs other players’ strategies have a grain of truth, we show that after some finite time the equilibrium outcome of the above game is arbitrarily close to a Nash equilibrium. Those assumptions are shown to be tight."
Institution partenaire
Langue
English
Data
2004
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