Conditional Inference with a Functional Nuisance Parameter

Isaiah Andrews, Anna Mikusheva
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引用次数: 58

Abstract

This paper shows that the problem of testing hypotheses in moment condition models without any assumptions about identification may be considered as a problem of testing with an infinite‐dimensional nuisance parameter. We introduce a sufficient statistic for this nuisance parameter in a Gaussian problem and propose conditional tests. These conditional tests have uniformly correct asymptotic size for a large class of models and test statistics. We apply our approach to construct tests based on quasi‐likelihood ratio statistics, which we show are efficient in strongly identified models and perform well relative to existing alternatives in two examples.
带有函数干扰参数的条件推理
本文表明,在没有辨识假设的情况下,矩条件模型的假设检验问题可以看作是具有无穷维扰参数的检验问题。我们在高斯问题中引入了对这个干扰参数的充分统计量,并提出了条件检验。这些条件检验对于一大类模型和检验统计量具有一致正确的渐近大小。我们应用我们的方法来构建基于准似然比统计的测试,在两个例子中,我们证明了这种方法在强识别模型中是有效的,并且相对于现有的替代方案表现良好。
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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