Lucio Bertoli-Barsotti , Marek Gagolewski , Grzegorz Siudem , Barbara Żogała-Siudem
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引用次数: 0
摘要
不平等是我们生活中固有的一部分:我们在收入分配、人才、引文等方面都能看到不平等。然而,在不同的环境中,不平等的程度也不尽相同:在有些系统中,可用资源的分配相对平均,但也有一小部分物品或代理人控制着大部分资产。我们最近观察到(Siudem et al., 2020),许多等级大小的分布可以通过一个基于时间的代理模型来近似,该模型涉及优先(富者愈富)和偶然(纯粹偶然)的混合附着。在本文中,我们指出了它与一个迭代过程的关系,这个迭代过程可以产生任意长度的等级分布和预定义的不平等程度(以基尼指数衡量)。我们证明,在我们的模型下,对于相似大小的样本,基尼指数、邦费罗尼指数、德韦戈蒂尼指数和胡佛指数是等价的。给定其中一个指数,我们就能重新计算出另一个指数的值。利用所获得的公式,我们还可以了解它们如何取决于样本大小。对大型经济学引用记录数据库(RePEc)的实证分析结果与我们的理论推导非常吻合。
Equivalence of inequality indices in the three-dimensional model of informetric impact
Inequality is an inherent part of our lives: we see it in the distribution of incomes, talents, citations, to name a few. However, its intensity varies across environments: there are systems where the available resources are relatively evenly distributed but also where a small group of items or agents controls the majority of assets. Numerous indices for quantifying the degree of inequality have been proposed but in general, they work quite differently.
We recently observed (Siudem et al., 2020) that many rank-size distributions might be approximated by a time-dependent agent-based model involving a mixture of preferential (rich-get-richer) and accidental (sheer chance) attachment. In this paper, we point out its relationship to an iterative process that generates rank distributions of any length and a predefined level of inequality, as measured by the Gini index.
We prove that, under our model, the Gini, Bonferroni, De Vergottini, and Hoover indices are equivalent for samples of similar sizes. Given one of them, we can recreate the value of another measure. Thanks to the obtained formulae, we can also understand how they depend on the sample size. An empirical analysis of a large database of citation records in economics (RePEc) yields a good match with our theoretical derivations.