Learning by doing vs. learning from others in a principal-agent model
We introduce learning in a principal-agent model of output sharing under moral hazard. We use social evolutionary learning to represent social learning and reinforcement, experience-weighted attraction (EWA) and individual evolutionary learning (IEL) to represent individual learning. Learning in the principal-agent model is difficult due to: the stochastic environment; the discontinuity in payoffs at the optimal contract; and the incorrect evaluation of foregone payoffs for IEL and EWA. Social learning is much more successful in adapting to the optimal contract than standard individual learning algorithms. A modified IEL using realized payoffs evaluation performs better but still falls short of social learning.
Year of publication: |
2010
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Authors: | Arifovic, Jasmina ; Karaivanov, Alexander |
Published in: |
Journal of Economic Dynamics and Control. - Elsevier, ISSN 0165-1889. - Vol. 34.2010, 10, p. 1967-1992
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Publisher: |
Elsevier |
Subject: | Learning Principal-agent model Moral hazard |
Saved in:
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