The Gini index is a popular inequality measure with many applications in social and economic studies. This paper studies semiparametric inference on the Gini indices of two semicontinuous populations. We characterize the distribution of each semicontinuous population by a mixture of a discrete point mass at zero and a continuous skewed positive component. A semiparametric density ratio model is then employed to link the positive components of the two distributions. We propose the maximum empirical likelihood estimators of the two Gini indices and their difference, and further investigate the asymptotic properties of the proposed estimators. The asymptotic results enable us to construct confidence intervals and perform hypothesis tests for the two Gini indices and their difference. We show that the proposed estimators are more efficient than the existing fully nonparametric estimators. The proposed estimators and the asymptotic results are also applicable to cases without excessive zero values. Simulation studies show the superiority of our proposed method over existing methods. Two real-data applications are presented using the proposed methods.
翻译:吉尼指数是一种流行的不平等衡量标准,在社会和经济研究中有许多应用。本文研究了两种半连续人口基尼指数的半参数推论。我们用零点离点质量和连续倾斜正分的组合来描述每个半连续人口的分布。然后采用了半对称密度比率模型,将两种分布的正成分联系起来。我们提议了两种吉尼指数的最大经验可能性估计器及其差异,并进一步调查了拟议估算器的无药可治特性。无药可治的结果使我们能够建立信任间隔,并对两种吉尼指数及其差异进行假设测试。我们表明,拟议的估算器比现有的完全非参数估计器更有效。拟议的估算器和无药可治的结果也适用于没有过高零值的案例。模拟研究显示我们拟议方法优于现有方法。使用拟议方法提出了两种实际数据应用。