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Identification and estimation of games with incomplete information using excluded regressors

机译:使用排除的回归变量识别和估计信息不完整的游戏

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We show structural components in binary games with incomplete information are nonparametrically identified using variation in player-specific excluded regressors. An excluded regressor for a player i is a sufficiently varying state variable that does not affect other players' utility and is additively separable from other components in i's payoff. Such excluded regressors arise in various empirical contexts. Our identification method is constructive, and provides a basis for nonparametric estimators. For a semiparametric model with linear payoffs, we propose root-N consistent and asymptotically normal estimators for players' payoffs. We also discuss extension to the case with multiple Bayesian Nash equilibria in the data-generating process without assuming equilibrium selection rules. (C) 2015 Elsevier B.V. All rights reserved.
机译:我们展示了二元游戏中具有不完整信息的结构组件,这些变化是通过使用玩家特定的排除回归变量进行非参数确定的。玩家i的排除回归变量是状态变量,该变量不会影响其他玩家的效用,并且可与i的收益中的其他组件加分。这种排除的回归因素出现在各种经验背景中。我们的识别方法具有建设性,并为非参数估计量提供了基础。对于具有线性收益的半参数模型,我们为玩家的收益提出了根N一致且渐近正态的估计量。我们还讨论了在不假设均衡选择规则的情况下,在数据生成过程中具有多个贝叶斯纳什均衡的情况的扩展。 (C)2015 Elsevier B.V.保留所有权利。

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