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New non-parametric inferences for low-income proportions

机译:低收入比例的新非参数推断

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Low-income proportion is an important index in describing the inequality of an income distribution. It has been widely used by governments in measuring social stability around the world. Established inferential methods for this index are based on the empirical estimator of the index. It may have poor finite sample performances when the real income data are skewed or has outliers. In this paper, based on a smooth estimator for the low-income proportion, we propose a smoothed jackknife empirical likelihood approach for inferences of the low-income proportion. Wilks theorem is obtained for the proposed jackknife empirical likelihood ratio statistic. Various confidence intervals based on the smooth estimator are constructed. Extensive simulation studies are conducted to compare the finite sample performances of the proposed intervals with some existing intervals. Finally, the proposed methods are illustrated by a public income dataset of the professors in University System of Georgia.
机译:低收入比例是描述收入分配不平等的重要指标。 它已被各国政府广泛用于衡量世界各地的社会稳定。 该指标的建立的推理方法基于索引的经验估计器。 当实际收入数据倾斜或具有异常值时,它可能具有差的有限样本性能。 本文基于低收入比例的平滑估计,我们提出了平滑的千刀的经验性似然方法,用于低收入比例的推动。 威尔斯定理是为提出的妓女经验似然比统计数据。 构建了基于平滑估计器的各种置信区间。 进行广泛的仿真研究,以将所提出的间隔的有限样本性能与一些现有的间隔进行比较。 最后,拟议的方法由格鲁吉亚大学系统的教授的公共收益数据集说明。

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