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A data-driven smooth test of symmetry

机译:数据驱动的对称性平滑测试

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In this paper we propose a data driven smooth test of symmetry. We first transform the raw data via the probability integral transformation according to a symmetrized empirical distribution, and show that under the null hypothesis of symmetry, the transformed data has a limiting uniform distribution, reducing testing for symmetry to testing for uniformity. Employing Neyman's smooth test of uniformity, we show that only odd-ordered orthogonal moments of the transformed data are required in constructing the test statistic. We present a standardized smooth test that is distribution-free asymptotically and derive the asymptotic behavior of the test and establish its consistency. Extension to dependent data case is discussed. We investigate the finite sample performance of the proposed tests on both homogeneous and mixed distributions (with unobserved heterogeneity). An empirical application on testing symmetry of wage adjustment process, based on heterogeneous wage contracts with different durations, is provided. (C) 2015 Elsevier B.V. All rights reserved.
机译:在本文中,我们提出了数据驱动的对称性平滑测试。我们首先根据对称的经验分布通过概率积分变换对原始数据进行变换,并表明在对称的零假设下,变换后的数据具有有限的均匀分布,从而将对对称性的测试减少为对均匀性的测试。利用Neyman的均匀性平滑检验,我们证明在构造检验统计量时仅需要转换数据的奇数正交矩。我们提出了一种标准的平滑测试,它是渐近无分布的,并得出了该测试的渐近行为并建立了一致性。讨论了依赖数据情况的扩展。我们调查在均匀分布和混合分布(未观察到的异质性)方面提出的测试的有限样本性能。提供了基于不同期限的异类工资合同测试工资调整过程对称性的经验应用。 (C)2015 Elsevier B.V.保留所有权利。

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