Identification-robust methods for comparing inequality with an application to regional disparities

Jean-Marie Dufour, Emmanuel Flachaire, Lynda Khalaf, Abdallah Zalghout
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Abstract

We propose Fieller-type methods for inference on generalized entropy inequality indices in the context of the two-sample problem which covers testing the statistical significance of the difference in indices, and the construction of a confidence set for this difference. In addition to irregularities arising from thick distributional tails, standard inference procedures are prone to identification problems because of the ratio transformation that defines the considered indices. Simulation results show that our proposed method outperforms existing counterparts including simulation-based permutation methods and results are robust to different assumptions about the shape of the null distributions. Improvements are most notable for indices that put more weight on the right tail of the distribution and for sample sizes that match macroeconomic type inequality analysis. While irregularities arising from the right tail have long been documented, we find that left tail irregularities are equally important in explaining the failure of standard inference methods. We apply our proposed method to analyze income per-capita inequality across U.S. states and non-OECD countries. Empirical results illustrate how Fieller-based confidence sets can: (i) differ consequentially from available ones leading to conflicts in test decisions, and (ii) reveal prohibitive estimation uncertainty in the form of unbounded outcomes which serve as proper warning against flawed interpretations of statistical tests.

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适用于地区差异的比较不平等的可靠识别方法
我们提出了在双样本问题背景下推断广义熵不等式指数的菲勒型方法,包括检验指数差异的统计显著性,以及构建该差异的置信集。除了厚分布尾部导致的不规则性之外,标准推断程序还容易出现识别问题,因为所考虑的指数是由比率变换定义的。模拟结果表明,我们提出的方法优于现有的同类方法,包括基于模拟的置换方法,而且结果对不同的空分布形状假设都很稳健。对于更重视分布右尾部的指数以及与宏观经济类型不平等分析相匹配的样本大小,我们的改进最为显著。虽然右尾的不规则性早已被记录在案,但我们发现左尾的不规则性在解释标准推断方法的失败方面同样重要。我们将所提出的方法用于分析美国各州和非经合组织国家的人均收入不平等。实证结果表明,基于 Fieller 的置信度集可以(i) 与现有的置信度集存在显著差异,从而导致检验决策中的冲突;(ii) 以无约束结果的形式揭示令人望而却步的估计不确定性,从而对统计检验的错误解释提出适当的警告。
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