Biegert Thomas, Özcan Berkay, Rossetti-Youlton Magdalena
London School of Economics and Political Science, London, UK.
Socius. 2023 Mar 27;9:23780231231158087. doi: 10.1177/23780231231158087. eCollection 2023 Jan-Dec.
The authors use Current Population Survey 2016 to 2021 quarterly data to analyze changes in household joblessness across metropolitan areas in the United States during the coronavirus disease 2019 pandemic. The authors first use shift-share analysis to decompose the change in household joblessness into changes in individual joblessness, household compositions, and polarization. The focus is on polarization, which is the result of the unequal distribution of individual joblessness across households. The authors find that the rise in household joblessness during the pandemic varies strongly across U.S. metropolitan areas. The initial stark increase and subsequent recovery are due largely to changes in individual joblessness. Polarization contributes notably to household joblessness but to varying degree. Second, the authors use metropolitan area-level fixed-effects regressions to test whether the educational profile of the population is a helpful predictor of changes in household joblessness and polarization. They measure three distinct features: educational levels, educational heterogeneity, and educational homogamy. Although much of the variance remains unexplained, household joblessness increased less in areas with higher educational levels. The authors show that how polarization contributes to household joblessness is shaped by educational heterogeneity and educational homogamy.
作者使用2016年至2021年美国当前人口调查的季度数据,分析了2019年冠状病毒病大流行期间美国各都市地区家庭失业情况的变化。作者首先使用转移份额分析,将家庭失业的变化分解为个人失业、家庭构成和两极分化的变化。重点是两极分化,它是个人失业在家庭间不平等分布的结果。作者发现,大流行期间家庭失业率的上升在美国各都市地区差异很大。最初的急剧上升和随后的复苏主要归因于个人失业的变化。两极分化对家庭失业有显著影响,但程度不同。其次,作者使用都市地区层面的固定效应回归,来检验人口的教育概况是否有助于预测家庭失业和两极分化的变化。他们衡量了三个不同的特征:教育水平、教育异质性和教育同质性。尽管仍有许多方差无法解释,但在教育水平较高的地区,家庭失业率上升幅度较小。作者表明,两极分化对家庭失业的影响方式受到教育异质性和教育同质性的影响。