Inequality is an inherent part of our lives: we see it in the distribution of incomes, talents, resources, and citations, amongst many others. Its intensity varies across different environments: from relatively evenly distributed ones, to where a small group of stakeholders controls the majority of the available resources. We would like to understand why inequality naturally arises as a consequence of the natural evolution of any system. Studying simple mathematical models governed by intuitive assumptions can bring many insights into this problem. In particular, we recently observed (Siudem et al., PNAS 117:13896-13900, 2020) that impact distribution might be modelled accurately by a time-dependent agent-based model involving a mixture of the rich-get-richer and sheer chance components. Here 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. Many indices quantifying the degree of inequality have been proposed. Which of them is the most informative? We show that, under our model, indices such as the Bonferroni, De Vergottini, and Hoover ones are equivalent. Given one of them, we can recreate the value of any other measure using the derived functional relationships. Also, thanks to the obtained formulae, we can understand how they depend on the sample size. An empirical analysis of a large sample of citation records in economics (RePEc) as well as countrywise family income data, confirms our theoretical observations. Therefore, we can safely and effectively remain faithful to the simplest measure: the Gini index.
翻译:不平等是我们生活的固有部分:我们看到它在收入、才能、资源和引用等分布中。它的强度因不同的环境而异:从相对均匀分布的环境到少数利益相关者控制大部分可用资源的环境。我们希望理解为什么不平等自然地由任何系统的自然演变而产生。研究由直观假设驱动的简单数学模型可以为这个问题带来很多见解。特别是,我们最近观察到(Siudem等人,PNAS 117: 13896-13900,2020)影响分布可以通过一个混合了富者愈富和纯粹偶然成分的时间相关的基于代理的模型来准确建模。在这里,我们指出它与一种迭代过程的关系,该过程生成任意长度和预定义不平等水平的名次分布,这是由Gini指数衡量的。已经提出了许多量化不平等程度的指数。哪一个最具信息价值?我们表明,在我们的模型下,Bonferroni、De Vergottini和Hoover等指数是等价的。有了其中一个,我们可以使用导出的函数关系重新创建任何其他度量的价值。此外,由于得到的公式,我们可以理解它们如何依赖样本大小。对经济学引文记录的大样本(RePEc)以及不同国家家庭收入数据的实证分析证实了我们的理论观察。因此,我们可以安全有效地忠实于最简单的度量:Gini指数。