Evidence based rules and learning in symmetric normal-form games

Evidence based rules and learning in symmetric normal-form games

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Article ID: iaor20001683
Country: Germany
Volume: 28
Issue: 1
Start Page Number: 111
End Page Number: 130
Publication Date: Jan 1999
Journal: International Journal of Game Theory
Authors:
Keywords: Nash theory and methods
Abstract:

We put forth a general theory of boundedly rational behavior and learning for symmetric normal-form games with unique symmetric Nash equilibria. A class of evidence-based behavioral rules is specified, which includes best-responding to a prior and Nash play. A player begins with initial propensities towards the rules, and given experience over time adjusts his/her propensities in proportion to the past performance of the rules. We focus on scenarios in which the past distribution of play is revealed to all players. Confronting this theory with experimental data, we find significant support for rule learning and heterogeneity among participants.

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