Asymptotic Efficiency in Parametric Structural Models with Parameter-Dependent Support

K. Hirano, J. Porter
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引用次数: 98

Abstract

In certain auction, search, and related models, the boundary of the support of the observed data depends on some of the parameters of interest. For such nonregular models, standard asymptotic distribution theory does not apply. Previous work has focused on characterizing the nonstandard limiting distributions of particular estimators in these models. In contrast, we study the problem of constructing efficient point estimators. We show that the maximum likelihood estimator is generally inefficient, but that the Bayes estimator is efficient according to the local asymptotic minmax criterion for conventional loss functions. We provide intuition for this result using Le Cam's limits of experiments framework.
具有参数依赖支持的参数结构模型的渐近效率
在某些拍卖、搜索和相关模型中,观测数据的支持边界取决于一些感兴趣的参数。对于这种非正则模型,标准渐近分布理论不适用。以前的工作集中在描述这些模型中特定估计量的非标准极限分布。相反,我们研究了构造有效点估计量的问题。我们证明了极大似然估计通常是低效的,而贝叶斯估计根据局部渐近极小极大准则是有效的。我们利用勒卡姆的实验极限框架为这一结果提供了直观的解释。
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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