评论

IF 7.5 1区 经济学 Q1 ECONOMICS Nber Macroeconomics Annual Pub Date : 2021-01-01 DOI:10.1086/712330
Raquel Fernández
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引用次数: 0

摘要

这是一篇不错的论文,它使用了美国社会保障局(SSA)的数据,为收入的性别差异提供了实证证据。它关注的是收入分配中前0.1%和后0.9%的性别代表差异。它考察了一个人在前百分位数的持续存在,年龄和行业构成的影响,并给出了一些生命周期动态的感觉,同时对比了女性和男性的存在。作者可以从SSA获得10%的个人收入历史代表性样本(通过选择所有具有相同社会安全号码转换后的最后一位数字的个人来构建)。这是一个32年的面板数据集:1981-2012。有基本的人口统计信息:年龄、性别、种族、工作类型(农场/非农、就业/自营职业)和收入。后者包括工资和薪金,奖金和行使股票期权,在W-2表格的框1中报告。在他们的大部分分析中,他们从10%的样本中选择了所有在那一年年龄在25岁到60岁之间,年收入超过最低门槛(相当于13周的全职工作,最低工资的一半)的个人。面板集的优点之一是,例如,人们可以研究多年的收入,以消除暂时的波动,询问有关持久性的问题,并检查终身收入的衡量标准。然而,这个数据集所牺牲的是这些个人的其他特征的丰富信息,如他们的教育、婚姻状况和子女、配偶属性和职业,而不是广泛的行业类别所捕获的信息。这让它变得很虚拟
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This is a nice paper that uses data from the US Social Security Administration (SSA) to provide empirical evidence on gender differences in earnings. It focuses on differences in gender representation at the top 0.1% and the next 0.9% of the earnings distribution. It examines the persistence of an individual’s presence in these top percentiles, how age and industry composition matter, and gives some feel for life-cycle dynamics, all the while contrasting the presence of women versus men. The authors have access to a 10% representative sample of individual earnings histories from the SSA (constructed by selecting all individuals with the same last digit of a transformation of the social security number). This is a panel data set spanning 32 years: 1981–2012. There is basic demographic information available: age, sex, race, type of work (farm/ nonfarm, employment/self-employment), and earnings. The latter consists of wages and salaries, bonuses, and exercised stock options as reported in Box 1 on a W-2 form. For most of their analysis, they select from the 10% sample all individuals who in that year are between 25 and 60 years old and whose annual earnings exceed a minimum threshold (equivalent to 13 weeks, full-time, at one-half minimum wage). Among the advantages of a panel set are that one can, for example, study earnings over a number of years to smooth out temporary fluctuations, ask questions about persistence, and examine measures of lifetime income. What this data set sacrifices, however, is any rich information about other characteristics of these individuals such as their education, marital status and children, spousal attributes, and occupation other than that captured by broad industry categories. This makes it virtually
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CiteScore
5.10
自引率
0.00%
发文量
23
期刊介绍: The Nber Macroeconomics Annual provides a forum for important debates in contemporary macroeconomics and major developments in the theory of macroeconomic analysis and policy that include leading economists from a variety of fields.
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