博弈论中混合策略非劣势纳什均衡的计算

C. A. Soares, L. Batista, F. Campelo, F. Guimarães
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引用次数: 3

摘要

寻找纳什均衡一直是博弈论研究的早期目标之一,直到今天仍然是一个挑战。介绍了一种计算范式博弈中混合纳什均衡帕累托最优集的多目标公式。计算这些集合在决策制定中非常有用,因为它将分析集中在具有更大结果的解决方案上,因此更稳定和更理想的解决方案。虽然该公式适用于任何多目标优化算法,但由于在求解多目标优化问题时具有良好的收敛性和多样性特性,我们采用了一种称为锥-epsilon MOEA的方法。所提出的公式的充分性在GAMBIT软件测试套件提供的大多数正常形式的游戏上进行了测试。结果表明,使用该公式的锥-epsilon MOEA在大多数博弈中都能正确地找到帕累托最优纳什均衡。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Computation of Mixed Strategy Non-dominated Nash Equilibria in Game Theory
Finding Nash equilibria has been one of the early objectives of research in game theory, and still represents a challenge to this day. We introduce a multiobjective formulation for computing Pareto-optimal sets of mixed Nash equilibria in normal form games. Computing these sets can be notably useful in decision making, because it focuses the analysis on solutions with greater outcome and hence more stable and desirable ones. While the formulation is suitable for any multiobjective optimization algorithm, we employ a method known as the cone-epsilon MOEA, due to its good convergence and diversity characteristics when solving multiobjective optimization problems. The adequacy of the proposed formulation is tested on most normal form games provided by the GAMBIT software test suite. The results show that the cone-epsilon MOEA working on the proposed formulation correctly finds the Pareto-optimal Nash equilibra in most games.
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