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Kernel-based testing with skewed and heavy-tailed data: Evidence from a nonparametric test for heteroskedasticity

机译:基于内核的偏斜和重尾数据测试:来自异方差性的非参数测试的证据

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We examine the performance of a nonparametric kernel-based specification test in the presence of skewed and heavy-tailed regressors. We start by modifying the Zheng (2009) test for heteroskedasticity by removing the random denominator in the test statistic, a common source of distortion for such tests. Asymptotic equivalence of our test statistic is shown and Monte Carlo simulations are provided to assess the finite sample performance. With normally distributed errors, we find slight improvements using our modified test when the regressors are asymmetric or symmetric without heavy-tails. Trimming and using a smaller bandwidth also improves size for these distributions. When the errors are heavy-tailed, the results are more favorable to our test. (C) 2018 Elsevier B.V. All rights reserved.
机译:我们在存在偏斜和重尾回归变量的情况下检查了基于非参数内核的规范测试的性能。我们首先通过删除测试统计量中的随机分母来修改Zheng(2009)的异方差测试,该统计量是此类测试的常见失真来源。显示了我们的测试统计量的渐进等效性,并提供了蒙特卡洛模拟来评估有限的样本性能。对于正态分布的错误,当回归变量是非对称或不带重尾的对称时,我们使用改进的测试会发现一些改进。修整和使用较小的带宽也可以改善这些分布的大小。当错误被严重拖尾时,结果对我们的测试更有利。 (C)2018 Elsevier B.V.保留所有权利。

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