In this paper, we propose new semiparametric procedures for making inference on linear functionals and their functions of two semicontinuous populations. The distribution of each population is usually characterized by a mixture of a discrete point mass at zero and a continuous skewed positive component, and hence such distribution is semicontinuous in the nature. To utilize the information from both populations, we model the positive components of the two mixture distributions via a semiparametric density ratio model. Under this model setup, we construct the maximum empirical likelihood estimators of the linear functionals and their functions, and establish the asymptotic normality of the proposed estimators. We show the proposed estimators of the linear functionals are more efficient than the fully nonparametric ones. The developed asymptotic results enable us to construct confidence regions and perform hypothesis tests for the linear functionals and their functions. We further apply these results to several important summary quantities such as the moments, the mean ratio, the coefficient of variation, and the generalized entropy class of inequality measures. Simulation studies demonstrate the advantages of our proposed semiparametric method over some existing methods. Two real data examples are provided for illustration.
翻译:在本文中,我们提出新的半参数程序,用于对线性功能及其两个半连续人口的功能进行推断。每个人口的分布通常以零点离点质量和连续偏斜正分成分的混合特征为特征,因此,这种分布在性质上是半连续的。为了利用两个人口的信息,我们通过半对称密度比率模型来模拟两种混合物分布的正构件。在这个模型设置下,我们构建线性功能及其功能的最大经验概率估计器,并确立拟议的估计器的无症状正常性。我们展示了线性功能的拟议估计器比完全非对称的功能更有效。开发的无对称结果使我们能够建立信任区,并对线性功能及其功能进行假设测试。我们还将这些结果应用到一些重要的概要数量,例如时间、平均比率、变异系数和普遍不平等计量分类。模拟研究显示了我们提议的半对准方法比现有方法的优点。两个实际数据示例是实际数据。