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首页> 外文期刊>Journal of business & economic statistics >Permutation Tests for Comparing Inequality Measures
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Permutation Tests for Comparing Inequality Measures

机译:比较不等式措施的排列测试

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摘要

Asymptotic and bootstrap tests for inequality measures are known to perform poorly in finite samples when the underlying distribution is heavy-tailed. We propose Monte Carlo permutation and bootstrap methods for the problem of testing the equality of inequality measures between two samples. Results cover the Generalized Entropy class, which includes Theil's index, the Atkinson class of indices, and the Gini index. We analyze finite-sample and asymptotic conditions for the validity of the proposed methods, and we introduce a convenient rescaling to improve finite-sample performance. Simulation results show that size correct inference can be obtained with our proposed methods despite heavy tails if the underlying distributions are sufficiently close in the upper tails. Substantial reduction in size distortion is achieved more generally. Studentized rescaled Monte Carlo permutation tests outperform the competing methods we consider in terms of power.
机译:众所周知,当潜在的分布重尾时,已知对不等式措施的渐近和自举试验在有限的样本中表现不佳。我们提出了Monte Carlo排列和引导方法,了解两个样品之间的不等式措施平等的问题。结果涵盖了广义熵类,包括Theil的指数,Atkinson类别的指数和Gini指数。我们分析有限样本和渐近条件,了解所提出的方法的有效性,我们介绍了一种方便的重新划分,以提高有限样本的性能。仿真结果表明,如果潜在的分布在上部尾部足够靠近尾部,则可以使用所提出的方法获得正确的推理。尺寸变形的大大减小更普遍。学生化的重新搜索蒙特卡罗置换测试优于我们在权力方面考虑的竞争方法。

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