Learning from experience in nonlinear environments: Evidence from a competition scenario |
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Affiliation: | 1. Department of Mathematics, Ningde Normal University, Ningde, Fujian 352300, PR China;2. College of Mathematics and Computer Science, Fuzhou University, Fuzhou, Fujian 350002, PR China;1. Institute of Mathematics, NASU, Ukraine;2. Kyiv School of Economics, Ukraine;3. Dept. of Economics, Society and Politics, University of Urbino, Italy;4. Dept of Economics, Northwestern University, USA |
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Abstract: | We test people’s ability to learn to estimate a criterion (probability of success in a competition scenario) that requires aggregating information in a nonlinear manner. The learning environments faced by experimental participants are kind in that they are characterized by immediate, accurate feedback involving either naturalistic outcomes (information on winning and/or ranking) or the normatively correct probabilities. We find no evidence of learning from the former and modest learning from the latter, except that a group of participants endowed with a memory aid performed substantially better. However, when the task is restructured such that information should be aggregated in a linear fashion, participants learn to make more accurate assessments. Our experiments highlight the important role played by prior beliefs in learning tasks, the default status of linear aggregation in many inferential judgments, and the difficulty of learning in nonlinear environments even in the presence of veridical feedback. |
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Keywords: | Probability assessment Kind learning environments Nonlinear judgmental tasks Linear models Exemplar-based models |
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