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Subsampling tests of parameter hypotheses and overidentifying restrictions with possible failure of identification

机译:参数假设的二次抽样检验和过度识别限制,可能导致识别失败

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摘要

We introduce a general testing procedure in models with possible identification failure that has exact asymptotic rejection probability under the null hypothesis. The procedure is widely applicable and in this paper we apply it to tests of arbitrary linear parameter hypotheses as well as to tests of overidentification in time series models given by unconditional moment conditions. The main idea is to subsample classical tests, like for example the Wald or the J test. More precisely, instead of using critical values based on asymptotic theory, we compute data-dependent critical values based on the subsampling technique. We show that under full identification the resulting tests are consistent against fixed alternatives and that they have exact asymptotic rejection probabilities under the null hypothesis independent of identification failure. Furthermore, the subsampling tests of parameter hypotheses are shown to have the same local power as the original tests under full identification. An algorithm is provided that automates the block size choice needed to implement the subsampling testing procedure. A Monte Carlo study shows that the tests have reasonable size properties and often outperform other robust tests in terms of power.
机译:我们在具有可能的识别失败的模型中引入一种通用测试程序,该模型在原假设下具有精确的渐近拒绝概率。该程序可广泛应用,在本文中,我们将其应用于任意线性参数假设的检验以及无条件矩条件给出的时间序列模型中的过度识别检验。主要思想是对经典测试进行子采样,例如Wald或J测试。更准确地说,我们不是使用基于渐近理论的临界值,而是基于二次采样技术来计算与数据相关的临界值。我们显示,在完全识别的情况下,所得测试与固定替代方案一致,并且在无效假设下,它们具有精确的渐近拒绝概率,而与识别失败无关。此外,在完全识别的情况下,参数假设的子采样测试显示与原始测试具有相同的局部功效。提供了一种算法,该算法可以自动执行实现子采样测试过程所需的块大小选择。蒙特卡洛(Monte Carlo)的研究表明,这些测试具有合理的尺寸属性,并且在功率方面通常优于其他鲁棒测试。

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