学习代理的计量经济学

Denis Nekipelov, Vasilis Syrgkanis, É. Tardos
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引用次数: 80

摘要

本文的主要目标是在不依赖纳什均衡假设的情况下,从广义第二价格拍卖中观察到的数据发展出一种推断参与人估值的理论。经济学中现有的从数据推断代理值的工作依赖于所有参与者的策略都是观察到的其他参与者的最佳对策的假设,即它们构成了纳什均衡。在本文中,我们展示了如何基于一个较弱的假设来执行推理:假设玩家正在使用某种形式的无悔学习。近年来,学习结果作为纳什均衡的一种有吸引力的替代方案出现,用于分析博弈结果,建模尚未达到稳定均衡的玩家,而是使用算法学习,旨在从先前的观察中学习最佳的游戏方式。在本文中,我们展示了如何推断使用算法学习策略的玩家的价值。这种推断是我们在拍卖数据上测试任何学习理论行为模型之前重要的第一步。我们将我们的技术应用于来自微软赞助搜索广告拍卖系统的数据集。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Econometrics for Learning Agents
The main goal of this paper is to develop a theory of inference of player valuations from observed data in the generalized second price auction without relying on the Nash equilibrium assumption. Existing work in Economics on inferring agent values from data relies on the assumption that all participant strategies are best responses of the observed play of other players, i.e. they constitute a Nash equilibrium. In this paper, we show how to perform inference relying on a weaker assumption instead: assuming that players are using some form of no-regret learning. Learning outcomes emerged in recent years as an attractive alternative to Nash equilibrium in analyzing game outcomes, modeling players who haven't reached a stable equilibrium, but rather use algorithmic learning, aiming to learn the best way to play from previous observations. In this paper we show how to infer values of players who use algorithmic learning strategies. Such inference is an important first step before we move to testing any learning theoretic behavioral model on auction data. We apply our techniques to a dataset from Microsoft's sponsored search ad auction system.
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