Computing Nash equilibria through computational intelligence methods

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摘要

Nash equilibrium constitutes a central solution concept in game theory. The task of detecting the Nash equilibria of a finite strategic game remains a challenging problem up-to-date. This paper investigates the effectiveness of three computational intelligence techniques, namely, covariance matrix adaptation evolution strategies, particle swarm optimization, as well as, differential evolution, to compute Nash equilibria of finite strategic games, as global minima of a real-valued, nonnegative function. An issue of particular interest is to detect more than one Nash equilibria of a game. The performance of the considered computational intelligence methods on this problem is investigated using multistart and deflection.

论文关键词:91A99,91A05,91A06,74P99,Nash equilibria,Evolutionary algorithms,Particle swarm optimization,Differential evolution,Evolution strategies

论文评审过程:Received 5 October 2003, Revised 18 February 2004, Available online 28 July 2004.

论文官网地址:https://doi.org/10.1016/j.cam.2004.06.005