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Modelling Lorenz Curves: robust and semi-parametric issues

机译:洛伦兹曲线建模:健壮和半参数问题

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摘要

Modelling Lorenz curves (LC) for stochastic dominance comparisons is central to the analysis of income distributions. It is conventional to use non-parametric statistics based on empirical income cumulants which are used in the construction of LC and other related second-order dominance criteria. However, although attractive because of its simplicity and its apparent flexibility, this approach suffers from important drawbacks. While no assumptions need to be made regarding the datagenerating process (income distribution model), the empirical LC can be very sensitive to data particularities, especially in the upper tail of the distribution. This robustness problem can lead in practice to “wrong” interpretation of dominance orders. A possible remedy for this problem is the use of parametric or semi-parametric models for the data-generating process and robust estimators to obtain parameter estimates. In this paper, we focus on the robust estimation of semi-parametric LC and investigate issues such as sensitivity of LC estimators to data contamination (Cowell and Victoria-Feser, 2002), trimmed LC (Cowell and Victoria-Feser, 2006), and inference for trimmed LC (Cowell and Victoria-Feser, 2003), robust semi-parametric estimation for LC (Cowell and Victoria-Feser, 2007), selection of optimal thresholds for (robust) semi-parametric modelling (Dupuis and Victoria-Feser, 2006), and use both simulations and real data to illustrate these points.
机译:为随机优势比较建模洛伦兹曲线(LC)是分析收入分配的关键。习惯上使用基于经验收入累积量的非参数统计数据,这些经验累积量用于构建信用证和其他相关的二阶优势标准。然而,尽管由于其简单性和明显的灵活性而吸引人,但是该方法具有重要的缺点。尽管无需对数据生成过程(收入分布模型)做出任何假设,但经验LC可能对数据的特殊性非常敏感,尤其是在分布的上尾部。这种健壮性问题在实践中可能导致对支配命令的“错误”解释。解决此问题的一种可能方法是使用参数或半参数模型进行数据生成过程,并使用鲁棒估计器来获取参数估计。在本文中,我们着重于对半参数LC的鲁棒估计,并研究诸如LC估计量对数据污染的敏感性(Cowell和Victoria-Feser,2002),修剪后的LC(Cowell和Victoria-Feser,2006)等问题。修剪LC的推论(Cowell和Victoria-Feser,2003),LC的鲁棒半参数估计(Cowell和Victoria-Feser,2007),(鲁棒)半参数建模的最佳阈值选择(Dupuis和Victoria-Feser, (2006年),并使用仿真和实际数据来说明这些观点。

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