| 杂志 | Journal of Economics Dynamics
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                      | 作者 | Jason Shachat,  J. Todd Swarthout | 
                    
                    
                      | 正文 | We report results from an experiment in which humans repeatedly play one of two games against a computer program that follows either a reinforcement or an experience weighted attraction learning algorithm. Our experiment shows these learning algo- rithms detect exploitable opportunities more sensitively than humans. Also, learning algorithms respond to detected payoff-increasing opportunities systematically; how- ever, the responses are too weak to improve the algorithms’ payoffs. Human play against various decision maker types does not vary significantly. These factors lead to a strong linear relationship between the humans’ and algorithms’ action choice propor- tions that is suggestive of the algorithms’ best response correspondences. | 
                    
                    
                      | JEL-Codes: | C72 C92 C81 | 
                    
                    
                      | 关键词: | Learning,  Repeated games,  Experiments,  Simulation |