This paper examines the finite-sample bias of estimators for the Theil and Atkinson indices, as well as for the variance-to-mean ratio (VMR), under the assumption that the population follows a finite mixture of gamma distributions with a common rate parameter. Using Mosimann's proportion-sum independence theorem and the structural relationship between the gamma and Dirichlet distributions, these estimators were rewritten as functions of Dirichlet vectors, which enabled the derivation of closed-form analytical expressions for their expected values. A Monte Carlo simulation study evaluates the performance of both the traditional and bias-corrected estimators across a range of mixture scenarios and sample sizes, revealing systematic bias induced by population heterogeneity and demonstrating the effectiveness of the proposed corrections, particularly in small and moderate samples. An empirical application to global per capita GDP data further illustrates the practical relevance of the methodology and confirms the suitability of gamma mixtures for representing structural economic heterogeneity.
翻译:本文研究了在总体服从具有共同速率参数的有限伽马混合分布假设下,泰尔指数、阿特金森指数以及方差-均值比(VMR)估计量的有限样本偏差。利用莫西曼的比例-和独立性定理以及伽马分布与狄利克雷分布之间的结构关系,将这些估计量重写为狄利克雷向量的函数,从而推导出其期望值的闭式解析表达式。一项蒙特卡洛模拟研究评估了传统估计量与偏差校正估计量在一系列混合情景和样本量下的性能,揭示了由总体异质性引起的系统性偏差,并证明了所提出校正方法的有效性,尤其是在小样本和中等样本中。对全球人均GDP数据的实证应用进一步说明了该方法论的实践相关性,并证实了伽马混合分布表征结构性经济异质性的适用性。