验证拍卖中的近似均衡

Fabian R. Pieroth, Tuomas Sandholm
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引用次数: 0

摘要

在实践中,大多数拍卖机制都不是策略防伪的,因此需要进行均衡分析来预测竞价行为。但在许多拍卖中,精确的均衡是不可知的,人们希望了解手动或计算生成的竞价策略是否构成近似均衡。我们开发了一种框架和方法,可以根据先前的投标策略样本或出价样本,估计策略轮廓与均衡的距离。我们估算了代理人偏离策略空间有限子集的策略所带来的效用收益。我们使用 PAC 学习法给出了独立先验分布和相互依存先验分布的误差边界。我们面临的主要挑战是,如果只考虑策略空间的有限子集,可能会错失巨大的效用收益。我们的研究在两个关键方面与之前的研究不同。首先,我们探讨了竞价策略对改变对手感知先验分布的影响,而不是假设其他代理真实竞价。其次,我们深入研究了相互依赖的先验推理,即一个代理的类型可能意味着其他代理的不同分布。我们的主要贡献在于建立了策略档案的充分条件和条件分布的接近性准则,以确保通过我们的有限子集估计的效用收益接近最大收益。据我们所知,我们的方法是第一种在单项拍卖之外的任何拍卖中验证近似均衡的方法。同时,我们的方法也是第一种基于样本的近似均衡验证方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Verifying Approximate Equilibrium in Auctions
In practice, most auction mechanisms are not strategy-proof, so equilibrium analysis is required to predict bidding behavior. In many auctions, though, an exact equilibrium is not known and one would like to understand whether -- manually or computationally generated -- bidding strategies constitute an approximate equilibrium. We develop a framework and methods for estimating the distance of a strategy profile from equilibrium, based on samples from the prior and either bidding strategies or sample bids. We estimate an agent's utility gain from deviating to strategies from a constructed finite subset of the strategy space. We use PAC-learning to give error bounds, both for independent and interdependent prior distributions. The primary challenge is that one may miss large utility gains by considering only a finite subset of the strategy space. Our work differs from prior research in two critical ways. First, we explore the impact of bidding strategies on altering opponents' perceived prior distributions -- instead of assuming the other agents to bid truthfully. Second, we delve into reasoning with interdependent priors, where the type of one agent may imply a distinct distribution for other agents. Our main contribution lies in establishing sufficient conditions for strategy profiles and a closeness criterion for conditional distributions to ensure that utility gains estimated through our finite subset closely approximate the maximum gains. To our knowledge, ours is the first method to verify approximate equilibrium in any auctions beyond single-item ones. Also, ours is the first sample-based method for approximate equilibrium verification.
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