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Actual and counterfactual growth incidence and delta Lorenz curves: Estimation and inference

机译:实际和反事实增长发生率和增量洛伦兹曲线:估计和推论

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摘要

Different economic growth episodes display very different distributional characteristics, both across countries and over time. Growth is sometimes accompanied by rising and sometimes by falling inequality. Applied economists have come to rely on the growth incidence curve, which gives the quantile-specific rate of income growth over a certain period, to describe these differences. This paper introduces a mean-independent analogue, the delta Lorenz curve, which gives the cumulative change in income share up to each quantile. We also develop estimation and inference procedures for both functions of quantiles. We establish the limiting null distribution of the test statistics of interest for those functions, and propose resampling methods to implement inference in practice. The proposed methods are used to compare the growth processes in the USA and Brazil during 1995-2007. Although growth in the average real wages was disappointing in both countries, the distribution of that growth was markedly different. In the USA, wage growth was mediocre for the bottom 80% of the sample, but much more rapid for the top 20%. In Brazil, conversely, wage growth was rapid below the median, and negative at the top. Wage shares fell in the USA up to the 83rd percentile, and rose in Brazil up to the 65th percentile.
机译:在不同国家和不同时期,不同的经济增长事件显示出非常不同的分布特征。增长有时伴随着不平等的加剧,有时伴随着不平等的下降。应用经济学家已经开始依赖增长发生率曲线来描述这些差异,该曲线给出了特定时期内特定分位数的收入增长率。本文介绍了独立于均值的类似物德尔塔洛伦兹曲线,该曲线给出了每个分位数的收入份额的累积变化。我们还为分位数的两种功能开发了估计和推理程序。我们为这些功能建立了感兴趣的测试统计数据的极限零分布,并提出了重采样方法以在实践中进行推理。所提出的方法用于比较1995年至2007年美国和巴西的生长过程。尽管这两个国家的平均实际工资增长令人失望,但增长的分布却明显不同。在美国,收入最低的80%样本的工资增长中等,但收入最高的20%的样本增长更快。相反,在巴西,工资增长在中位数以下快速增长,而在顶部处于负增长。美国的工资份额下降到第83个百分位,而巴西的工资份额上升到第65个百分位。

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