An application of LASSO and multiple imputation techniques to income dynamics with cross‐sectional data

IF 1.9 3区 经济学 Q2 ECONOMICS
Leonardo Lucchetti, Paul Corral, Andrés Ham, Santiago Garriga
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引用次数: 0

Abstract

This paper introduces, validates, and applies a Least Absolute Shrinkage and Selection Operator with multiple imputation by Predictive Mean Matching (LASSO‐PMM) method to estimate intra‐generational income dynamics from cross‐sectional data. We validate the method using 36 harmonized panel data sets in four Latin American countries and apply it to cross‐section data from 43 countries across the world. Results show that LASSO‐PMM predictions are statistically indistinguishable from actual household poverty rates, mobility indicators, and income or consumption changes. These findings suggest that estimating economic mobility using a LASSO‐PMM approach may accurately approximate actual income dynamics when panel data are unavailable.
将 LASSO 和多重估算技术应用于横截面数据的收入动态分析
本文介绍、验证并应用了预测均值匹配多重估算的最小绝对缩减和选择操作法(LASSO-PMM),以估算横截面数据中的代内收入动态。我们使用四个拉丁美洲国家的 36 个统一面板数据集验证了该方法,并将其应用于全球 43 个国家的横截面数据。结果表明,LASSO-PMM 预测结果与实际家庭贫困率、流动性指标以及收入或消费变化在统计上没有区别。这些结果表明,在没有面板数据的情况下,使用 LASSO-PMM 方法估计经济流动性可能会准确地接近实际收入动态。
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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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