Stochastic evolution with slow learning
This paper studies the extent to which diffusion approximations provide a reliable guide to equilibrium selection results in finite games. It is shown that they do for a class of finite games with weak learning provided that limits are taken in a certain order. The paper also shows that making mutat...
Auteur principal: | Beggs, A |
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Format: | Working paper |
Publié: |
University of Oxford
2000
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