Learning with minimal information in continuous games

Author:

Bervoets Sebastian123,Bravo Mario4,Faure Mathieu123

Affiliation:

1. Aix-Marseille Univ

2. CNRS

3. AMSE

4. Departamento de Matemática y Ciencia de la Computación, Universidad de Santiago de Chile

Abstract

While payoff‐based learning models are almost exclusively devised for finite action games, where players can test every action, it is harder to design such learning processes for continuous games. We construct a stochastic learning rule, designed for games with continuous action sets, which requires no sophistication from the players and is simple to implement: players update their actions according to variations in own payoff between current and previous action. We then analyze its behavior in several classes of continuous games and show that convergence to a stable Nash equilibrium is guaranteed in all games with strategic complements as well as in concave games, while convergence to Nash equilibrium occurs in all locally ordinal potential games as soon as Nash equilibria are isolated.

Funder

Agence Nationale de la Recherche

Publisher

The Econometric Society

Subject

General Economics, Econometrics and Finance

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