Finding Needles in Haystacks: Multiple-Imputation Record Linkage Using Machine Learning
John Abowd (),
Joelle Abramowitz,
Margaret Levenstein,
Kristin McCue,
Dhiren Patki,
Trivellore Raghunathan,
Ann M. Rodgers,
Matthew Shapiro,
Nada Wasi and
Dawn Zinsser
Working Papers from U.S. Census Bureau, Center for Economic Studies
Abstract:
This paper considers the problem of record linkage between a household-level survey and an establishment-level frame in the absence of unique identifiers. Linkage between frames in this setting is challenging because the distribution of employment across establishments is highly skewed. To address these difficulties, this paper develops a probabilistic record linkage methodology that combines machine learning (ML) with multiple imputation (MI). This ML-MI methodology is applied to link survey respondents in the Health and Retirement Study to their workplaces in the Census Business Register. The linked data reveal new evidence that non-sampling errors in household survey data are correlated with respondents’ workplace characteristics.
Pages: 37 pages
Date: 2021-11
New Economics Papers: this item is included in nep-big and nep-cmp
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Citations: View citations in EconPapers (1)
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https://www2.census.gov/ces/wp/2021/CES-WP-21-35.pdf First version, 2021 (application/pdf)
Related works:
Working Paper: Finding Needles in Haystacks: Multiple-Imputation Record Linkage Using Machine Learning (2021) 
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Persistent link: https://EconPapers.repec.org/RePEc:cen:wpaper:21-35
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