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Bootstrapping the GMM overidentification test under first-order underidentification

机译:在一阶不发条件下引导GMM过度识别测试

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摘要

The main contribution of this paper is to study the applicability of the bootstrap to estimating the distribution of the standard test of overidentifying restrictions of Hansen (1982) when the model is globally identified but the rank condition fails to hold (lack of first-order local identification). An important example for which these conditions are verified is the popular test of common conditionally heteroskedastic features proposed by . As Dovonon and Renault (2013b) show, the Jacobian matrix for this model is identically zero at the true parameter value, resulting in a highly nonstandard limiting distribution that complicates the computation of critical values.We first show that the standard GMM bootstrap fails to consistently estimate the distribution of the overidentification restrictions test under lack of first-order identification. We then propose a new bootstrap method that is asymptotically valid in this context. The modification consists of adding an additional term that recenters the bootstrap moment conditions in a way as to ensure that the bootstrap Jacobian matrix is zero when evaluated at the GMM estimate.
机译:本文的主要贡献是研究自举者估算汉森(1982)估算汉森限制的标准测试的分布,但等级条件未能持有(缺乏一流的本地鉴别)。验证了这些条件的一个重要示例是所提出的常见条件异质性能的普通条件性的普遍测试。作为Dovonon和Renault(2013b)显示,该模型的Jacobian矩阵在真正的参数值下相同为零,导致高度非标准的限制分布,使关键值的计算复杂化.WE首先显示标准GMM Bootstrap无法始终如一地失败估计缺乏一阶识别下的过度识别限制测试的分布。然后,我们提出了一种新的引导方法,即在此上下文中是渐近的。修改包括添加一个附加术语,以便在GMM估计下评估时,以确保自举jacobian矩阵为零的方式添加引导矩状况。

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