The first part of this paper is a brief survey of the approaches to economic inequality based on ideas from statistical physics and kinetic theory. These include the Boltzmann kinetic equation, the time-reversal symmetry, the ergodicity hypothesis, entropy maximization, and the Fokker-Planck equation. The origins of the exponential Boltzmann-Gibbs distribution and the Pareto power law are discussed in relation to additive and multiplicative stochastic processes. The second part of the paper analyzes income distribution data in the USA for the time period 1983-2018 using a two-class decomposition. We present overwhelming evidence that the lower class (more than 90% of the population) is described by the exponential distribution, whereas the upper class (about 4% of the population in 2018) by the power law. We show that the significant growth of inequality during this time period is due to the sharp increase in the upper-class income share, whereas relative inequality within the lower class remains constant. We speculate that the expansion of the upper-class population and income shares may be due to increasing digitization and non-locality of the economy in the last 40 years.
翻译:本文的第一部分是对基于统计物理和动能理论理念的经济不平等方法的简要调查,其中包括布尔兹曼动能方程、时间-逆向对称、时间-反转假设、英格度假设、最大化和福克-普朗克方程。指数式博尔茨曼-吉布斯分布和帕雷托权力法的起源与添加和多倍复制的随机过程有关。论文的第二部分用两层分解法分析1983-2018年期间美国的收入分配数据。我们提供了压倒性证据,表明下层(超过90%的人口)是指数分布的描述,而上层(大约为2018年人口的4%)则是权力法的描述。我们表明,这一时期不平等的显著增长是由于上层收入份额的急剧增长,而下层收入的相对不平等则保持不变。我们推测,上层人口和收入份额的扩大可能是由于40年来经济的数字化和非地方化增加。