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Statistical Inference With Generalized Gini Indices Of Inequality, Poverty, And Welfare

机译:用不平等,贫困和福利的广义基尼指数进行统计推断

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摘要

This article considers statistical inference for consistent estimators of generalized Gini indices of inequality, poverty, and welfare. Our method does not require grouping the population into a fixed number of quantiles. The empirical indices are shown to be asymptotically normally distributed using functional limit theory. Easily computed asymptotic variance expressions are obtained using influence functions. Inference based on first-order asymptotics is then compared with the grouped method and various bootstrap methods in simulations and with U.S. income data. The bootstrap-t method based on our asymptotic theory is found to have superior size and power properties in small samples.
机译:本文考虑对不平等,贫困和福利的广义基尼指数的一致估计进行统计推断。我们的方法不需要将总体分为固定数量的分位数。使用功能极限理论,经验指标显示为渐近正态分布。使用影响函数可以轻松计算渐近方差表达式。然后将基于一阶渐近的推论与模拟中的分组方法和各种引导方法以及美国收入数据进行比较。发现基于我们的渐近理论的bootstrap-t方法在小样本中具有出色的大小和功效。

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