Kinetic theory of active particles meets auction theory

Carla Crucianelli, Juan Pablo Pinasco, Nicolas Saintier
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Abstract

In this paper we study Nash equilibria in auctions from the kinetic theory of active particles point of view. We propose a simple learning rule for agents to update their bidding strategies based on their previous successes and failures, in first-price auctions with two bidders. Then, we formally derive the corresponding kinetic equations which describe the evolution over time of the distribution of agents on the bidding strategies. We show that the stationary solution of the equation corresponds to the symmetric Nash equilibrium of the auction, and we prove the convergence to this stationary solution when time goes to infinity. We also introduce a more general learning rule that only depends on the income of agents, and we apply to both first- and second-price auctions. We show that agents learn the Nash equilibrium in first- and second-price auctions with these rules. We present agent-based simulations of the models, and we discuss several open problems.

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活性粒子动力学理论与拍卖理论的结合
本文从活跃粒子动力学理论的角度研究拍卖中的纳什均衡。我们提出了一个简单的学习规则,让代理人在有两个投标人的一口价拍卖中,根据他们之前的成功和失败经历更新他们的投标策略。然后,我们正式推导出相应的动力学方程,该方程描述了代理人出价策略分布随时间的演变。我们证明了方程的静态解对应于拍卖的对称纳什均衡,并证明了当时间达到无穷大时,该方程会收敛到这个静态解。我们还引入了一种更一般的学习规则,它只取决于代理人的收入,并适用于第一和第二价格拍卖。我们证明,代理人可以通过这些规则学习第一和第二价格拍卖中的纳什均衡。我们介绍了这些模型的代理模拟,并讨论了几个悬而未决的问题。
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