LEARNING IN BAYESIAN GAMES BY BOUNDED RATIONAL PLAYERS II: NONMYOPIA
Konstantinos Serfes () and
Nicholas C. Yannelis
Macroeconomic Dynamics, 1998, vol. 2, issue 2, 141-155
Abstract:
We generalize results of earlier work on learning in Bayesian games by allowing players to make decisions in a nonmyopic fashion. In particular, we address the issue of nonmyopic Bayesian learning with an arbitrary number of bounded rational players, i.e., players who choose approximate best-response strategies for the entire horizon (rather than the current period). We show that, by repetition, nonmyopic bounded rational players can reach a limit full-information nonmyopic Bayesian Nash equilibrium (NBNE) strategy. The converse is also proved: Given a limit full-information NBNE strategy, one can find a sequence of nonmyopic bounded rational plays that converges to that strategy.
Date: 1998
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Persistent link: https://EconPapers.repec.org/RePEc:cup:macdyn:v:2:y:1998:i:02:p:141-155_00
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