论基尼指数与福利指数变化的联合分布

G. Lo, Pape Djiby Mergane, T. A. Kpanzou
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引用次数: 0

摘要

本文的目的是通过使用Mergane和Lo(2013)中描述的高斯场来建立基尼指数和贫困指标相互影响的渐近行为。给出了一维泛函布朗桥和二维泛函布朗桥高斯场的表示定理。当这些表示与已有的表示相结合时,会导致与其他统计数据(如增长、福利和不平等指数)的联合渐近分布,然后揭示与它们之间相互影响相关的有趣结果。这些结果也适用于研究一种增长是否公平,这取决于不平等指标的变化。数据驱动的应用程序也是可用的。虽然方差乍一看似乎很复杂,但在我们提供的R代码的帮助下,它们的计算是可以得到指标的置信区间的。除了当前结果之外,所提供的表示在与其他统计数据的不同表示相关联时也很有用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
On the joint distribution of variations of the Gini index and Welfare indices
The aim of this paper is to establish the asymptotic behavior of the mutual influence of the Gini index and the poverty measures by using the Gaussian fields described in Mergane and Lo(2013). The results are given as representation theorems using the Gaussian fields of the unidimensional or the bidimensional functional Brownian bridges. Such representations, when combined with those already available, lead to joint asymptotic distributions with other statistics of interest like growth, welfare and inequality indices and then, unveil interesting results related to the mutual influence between them. The results are also appropriate for studying whether a growth is fair or not, depending on the variation of the inequality measure. Datadriven applications are also available. Although the variances may seem complicated at a first sight, their computations which are needed to get confidence intervals of the indices, are possible with the help of R codes we provide. Beyond the current results, the provided representations are useful in connection with different ones of other statistics.
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