Mechanism with unique learnable equilibria

Paul Dütting, Thomas Kesselheim, É. Tardos
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引用次数: 5

Abstract

The existence of a unique equilibrium is the classic tool for ensuring predictiveness of game theory. Typical uniqueness results, however, are for Nash and Bayes-Nash equilibria and do not guarantee that natural game playing dynamic converges to this equilibrium. In fact, there are well known examples in which the equilibrium is unique, yet natural learning behavior does not converge to it. Motivated by this, we strive for stronger uniqueness results. We do not only require that there is a unique equilibrium, but also that this equilibrium must be learnable. We adopt correlated equilibrium as our solution concept, as simple and natural learning algorithms guarantee that the empirical distribution of play converges to the space of correlated equilibria. Our main result is to show uniqueness of correlated equilibria in a large class of single-parameter mechanisms with matroid structure. We also show that our uniqueness result extends to problems with polymatroid structure under some conditions. Our model includes a number of special cases interesting on their own right, such as procurement auctions and Bertrand competitions. An interesting feature of our model is that we do not need to assume that the players have quasi-linear utilities, and hence can incorporate models with risk averse players and certain forms of externalities.
具有唯一可学习平衡的机制
唯一均衡的存在是保证博弈论可预见性的经典工具。然而,典型的唯一性结果是针对纳什和贝叶斯-纳什均衡的,并不能保证自然博弈动态收敛于该均衡。事实上,有一些众所周知的例子,其中平衡是唯一的,但自然学习行为并不收敛于它。在此激励下,我们追求更强的独特性结果。我们不仅要求有一种独特的平衡,而且还要求这种平衡必须是可学习的。我们采用相关均衡作为我们的解概念,因为简单自然的学习算法保证了游戏的经验分布收敛到相关均衡的空间。我们的主要结果是证明了一类具有类阵结构的单参数机构相关平衡点的唯一性。在一定条件下,我们还证明了我们的唯一性结果可以推广到具有多拟阵结构的问题。我们的模型包括一些特殊情况,如采购拍卖和Bertrand竞争。我们模型的一个有趣特征是,我们不需要假设参与者具有准线性效用,因此可以将风险厌恶参与者和某些形式的外部性纳入模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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