Data and code for: Predicting Cooperation with Learning Models
收藏ICPSR2024-01-01 更新2026-04-16 收录
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https://www.openicpsr.org/openicpsr/project/182668/version/V1/view
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资源简介:
The data is compiled from 17 different experimental papers on the infinitely repeated prisoner's dilemma game. <br><br>Abstract: We use simulations of a simple learning model to predict cooperation rates in the experimental play of the indefinitely repeated prisoner’s dilemma. We suppose that learning and the game parameters only influence play in the initial round of each supergame, and that after these rounds play depends only on the outcome of the previous round. We find that our model predicts out-of-sample cooperation at least as well as models with more parameters and harder-to-interpret machine learning algorithms. Our results let us predict the effect of session length and help explain past findings on the role of strategic uncertainty.
提供机构:
Department of Economics, MIT; Department of Economics, Uppsala Universitet
创建时间:
2024-01-01



