New Digital Technologies and Heterogeneous Employment and Wage Dynamics in the United States: Evidence from Individual-Level Data

Frank M. Fossen, Alina Sorgner
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引用次数: 23

Abstract

We investigate heterogeneous effects of new digital technologies on the individual-level employment- and wage dynamics in the U.S. labor market in the period from 2011-2018. We employ three measures that reflect different aspects of impacts of new digital technologies on occupations. The first measure, as developed by Frey and Osborne (2017), assesses the computerization risk of occupations, the second measure, developed by Felten et al. (2018), provides an estimate of recent advances in artificial intelligence (AI), and the third measure assesses the suitability of occupations for machine learning (Brynjolfsson et al., 2018), which is a subfield of AI. Our empirical analysis is based on large representative panel data, the matched monthly Current Population Survey (CPS) and its Annual Social and Economic Supplement (ASEC). The results suggest that the effects of new digital technologies on employment stability and wage growth are already observable at the individual level. High computerization risk is associated with a high likelihood of switching one's occupation or becoming non-employed, as well as a decrease in wage growth. However, advances in AI are likely to improve an individual's job stability and wage growth. We further document that the effects are heterogeneous. In particular, individuals with high levels of formal education and older workers are most affected by new digital technologies.
新数字技术与美国异质就业和工资动态:来自个人层面数据的证据
我们研究了2011-2018年期间新数字技术对美国劳动力市场个人层面就业和工资动态的异质影响。我们采用了三种衡量方法来反映新数字技术对职业的不同影响。Frey和Osborne(2017)开发的第一个衡量标准评估了职业的计算机化风险,Felten等人(2018)开发的第二个衡量标准提供了对人工智能(AI)最新进展的估计,第三个衡量标准评估了职业对机器学习的适用性(Brynjolfsson等人,2018),这是人工智能的一个子领域。我们的实证分析基于大型代表性面板数据、匹配的月度当前人口调查(CPS)及其年度社会和经济补充(ASEC)。结果表明,新的数字技术对就业稳定和工资增长的影响已经在个人层面上可以观察到。高计算机化风险与转换职业或失业的高可能性以及工资增长的下降有关。然而,人工智能的进步可能会提高个人的工作稳定性和工资增长。我们进一步证明,这些影响是异质的。特别是,受过高水平正规教育的个人和年龄较大的工人受新数字技术的影响最大。
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