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首页> 外文期刊>Journal of Econometrics >Exogeneity tests, incomplete models, weak identification and non-Gaussian distributions: Invariance and finite-sample distributional theory
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Exogeneity tests, incomplete models, weak identification and non-Gaussian distributions: Invariance and finite-sample distributional theory

机译:Exogeneity测试,模型不完整,识别弱和非高斯分布:不变性和有限样的分布理论

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We study the distribution of Durbin-Wu-Hausman (DWH) and Revankar-Hartley (RH) tests for exogeneity from a finite-sample viewpoint, under the null and alternative hypotheses. We consider linear structural models with possibly non-Gaussian errors, where structural parameters may not be identified and where reduced forms can be incompletely specified (or nonparametric). On level control, we characterize the null distributions of all the test statistics. Through conditioning and invariance arguments, we show that these distributions do not involve nuisance parameters. In particular, this applies to several test statistics for which no finite-sample distributional theory is yet available, such as the standard statistic proposed by Hausman (1978). The distributions of the test statistics may be non-standard - so corrections to usual asymptotic critical values are needed - but the characterizations are sufficiently explicit to yield finite-sample (Monte-Carlo) tests of the exogeneity hypothesis. The procedures so obtained are robust to weak identification, missing instruments or misspecified reduced forms, and can easily be adapted to allow for parametric non-Gaussian error distributions. We give a general invariance result (block triangular invariance) for exogeneity test statistics. This property yields a convenient exogeneity canonical form and a parsimonious reduction of the parameters on which power depends. In the extreme case where no structural parameter is identified, the distributions under the alternative hypothesis and the null hypothesis are identical, so the power function is flat, for all the exogeneity statistics. However, as soon as identification does not fail completely, this phenomenon typically disappears. We present simulation experiments which confirm the finite-sample theory. The theoretical results are illustrated with an empirical example : the relation between trade and economic growth. (C) 2020 Elsevier B.V. All rights reserved.
机译:我们研究了Dwhin-Wu-Hausman(DWh)和Revankar-Hartley(RH)测试的分布,从有限样本的观点下,在Null和替代假设下进行了重生。我们考虑具有可能非高斯误差的线性结构模型,其中可能无法识别结构参数,并且可以不完全指定减少形式(或非参数)。在级别控制上,我们对所有测试统计数据的空分布表示。通过调节和不变性论点,我们表明这些分布不涉及滋扰参数。特别是,这适用于多个测试统计数据,没有有限样本分配理论可用,例如Hausman(1978)提出的标准统计数据。测试统计的分布可能是非标准的 - 所以需要对通常的渐近关键值的校正 - 但表征足以明确以产生整个假设的有限样本(Monte-Carlo)测试。如此获得的程序对于弱识别,缺失仪器或错过的减少形式具有鲁棒,并且可以很容易地适应参数非高斯误差分布。我们给出了一般的不变性结果(阻止三角形不变性),以获得Exogeneity测试统计信息。该物业产生方便的不均匀性规范形式,并减少了功率取决全的参数。在没有识别结构参数的极端情况下,替代假设下的分布和零假设是相同的,因此功率函数是平坦的,用于所有的交易性统计。但是,一旦识别完全没有失败,这种现象通常会消失。我们提出了确认有限样本理论的仿真实验。理论结果用经验例子说明:贸易与经济增长之间的关系。 (c)2020 Elsevier B.V.保留所有权利。

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