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ESTlMATION AND INFERENCE WITH WEAK, SEMI-STRONG, AND STRONG IDENTIFICATION

机译:弱,半强和强标识的估计和推理

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This paper analyzes the properties of standard estimators, tests, and confidence sets (CS's) for parameters that are unidentified or weakly identified in some parts of the parameter space. The paper also introduces methods to make the tests and cs's robust to such identification problems. The results apply to a class of extremum estimators and corresponding tests and cs's that are based on criterion functions that satisfy certain asymptotic stochastic quadratic expansions and that depend on the parameter that determines the strength of identification. This covers a class of models estimated using maximum likelihood (ML), least squares (LS), quantile, generalized method of moments, generalized empirical likelihood, minimum distance, and semi-parametric estimators.The consistency/lack-of-consistency and asymptotic distributions of the estimators are established under a full range of drifting sequences of true distributions. The asymptotic sizes (in a uniform sense) of standard and identification-robust tests and CS's are established. The results are applied to the ARMA(1,1) time series model estimated by ML and to the nonlinear regression model estimated by LS. In companion papers, the results are applied to a number of other models.
机译:本文分析了参数空间某些部分中未标识或弱标识的参数的标准估计量,检验和置信集(CS)的属性。本文还介绍了进行测试的方法以及CS对此类识别问题的鲁棒性。结果适用于一类极值估计器以及相应的检验和cs,它们基于满足某些渐近随机二次展开且取决于确定识别强度的参数的准则函数。这涵盖了使用最大似然(ML),最小二乘(LS),分位数,广义矩量法,广义经验似然,最小距离和半参数估计量估计的一类模型。在真实分布的所有漂移序列范围内建立估计量的分布。确定了标准和鲁棒性测试以及CS的渐近大小(统一意义上)。结果应用于ML估计的ARMA(1,1)时间序列模型和LS估计的非线性回归模型。在随附的论文中,结果被应用于许多其他模型。

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