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Developing a Residence Candidate File for Use With Employer-Employee Matched Data

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  • Matthew Graham
  • Mark Kutzbach
  • Danielle H. Sandler

Abstract

This paper describes the Longitudinal Employer-Household Dynamics (LEHD) program's ongoing efforts to use administrative records in a predictive model that describes residence locations for workers. This project was motivated by the discontinuation of a residence file produced elsewhere at the U.S. Census Bureau. The goal of the Residence Candidate File (RCF) process is to provide the LEHD Infrastructure Files with residence information that maintains currency with the changing state of administrative sources and represents uncertainty in location as a probability distribution. The discontinued file provided only a single residence per person/year, even when contributing administrative data may have contained multiple residences. This paper describes the motivation for the project, our methodology, the administrative data sources, the model estimation and validation results, and the file specifications. We find that the best prediction of the person-place model provides similar, but superior, accuracy compared with previous methods and performs well for workers in the LEHD jobs frame. We outline possibilities for further improvement in sources and modeling as well as recommendations on how to use the preference weights in downstream processing.

Suggested Citation

  • Matthew Graham & Mark Kutzbach & Danielle H. Sandler, 2017. "Developing a Residence Candidate File for Use With Employer-Employee Matched Data," CES Technical Notes Series 17-01, Center for Economic Studies, U.S. Census Bureau.
  • Handle: RePEc:cen:tnotes:17-01
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    Download Restriction: CES Technical Notes may contain confidential data and, thereby, disclosure is prohibited. Researchers on approved projects (to apply for access, please see https://www.census.gov/ces/rdcresearch/howtoapply.html) with the correct permissions can request full text notes from CES.Technical.Notes.List@census.gov.
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    Cited by:

    1. Hellerstein, Judith K. & Kutzbach, Mark J. & Neumark, David, 2019. "Labor market networks and recovery from mass layoffs: Evidence from the Great Recession period," Journal of Urban Economics, Elsevier, vol. 113(C).
    2. Andrew S. Green & Mark J. Kutzbach & Lars Vilhuber, 2017. "Two Perspectives on Commuting: A Comparison of Home to Work Flows Across Job-Linked Survey and Administrative Files," Working Papers 17-34, Center for Economic Studies, U.S. Census Bureau.

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