Using machine learning to unveil the predictors of intergenerational mobility

IF 1.9 3区 经济学 Q2 ECONOMICS
Luís Clemente‐Casinhas, Alexandra Ferreira‐Lopes, Luís Filipe Martins
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Abstract

We assess the predictors of intergenerational mobility in income and education for a sample of 137 countries, between 1960 and 2018, using the World Bank's Global Database on Intergenerational Mobility (GDIM). The Rigorous LASSO and the Random Forest and Gradient Boosting algorithms are considered, to avoid the consequences of an ad‐hoc model selection in our high dimensionality context. We obtain variable importance plots and analyze the relationships between mobility and its predictors through Shapley values. Results show that intergenerational income mobility is expected to be positively predicted by the parental average education, the share of married individuals and negatively predicted by the share of children that have completed less than primary education, the growth rate of population density, and inequality. Mobility in education is expected to have a positive relationship with the adult literacy, government expenditures on primary education, and the stock of migrants. The unemployment and poverty rates matter for income mobility, although the direction of their relationship is not clear. The same occurs for education mobility and the growth rate of real GDP per capita, the degree of urbanization, the share of female population, and income mobility. Income mobility is found to be greater for the 1960s cohort. Countries belonging to the Latin America and Caribbean region present lower mobility in income and education. We find a positive relationship between predicted income mobility and observed mobility in education.
利用机器学习揭示代际流动的预测因素
我们利用世界银行的全球代际流动性数据库(GDIM),对 137 个国家 1960 年至 2018 年间的收入和教育代际流动性预测因素进行了评估。我们考虑了严格的 LASSO 算法、随机森林算法和梯度提升算法,以避免在我们的高维背景下临时选择模型的后果。我们获得了变量重要性图,并通过 Shapley 值分析了流动性与其预测因素之间的关系。结果显示,代际收入流动性预计会受到父母平均教育程度、已婚人口比例的正向预测,而受到未完成初等教育的儿童比例、人口密度增长率和不平等的负向预测。教育方面的流动预计与成人识字率、政府在初等教育方面的支出以及移民存量呈正相关。失业率和贫困率与收入流动性有关,但其关系的方向并不明确。教育流动性与实际人均国内生产总值增长率、城市化程度、女性人口比例和收入流动性的关系也是如此。20 世纪 60 年代组群的收入流动性更大。拉丁美洲和加勒比地区国家的收入和教育流动性较低。我们发现,预测的收入流动性与观察到的教育流动性之间存在正相关关系。
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来源期刊
CiteScore
4.00
自引率
10.00%
发文量
62
期刊介绍: The major objective of the Review of Income and Wealth is to advance knowledge on the definition, measurement and interpretation of national income, wealth and distribution. Among the issues covered are: - national and social accounting - microdata analyses of issues related to income and wealth and its distribution - the integration of micro and macro systems of economic, financial, and social statistics - international and intertemporal comparisons of income, wealth, inequality, poverty, well-being, and productivity - related problems of measurement and methodology
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