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FALLING HOUSE PRICES AND LABOR MOBILITY: EVIDENCE FROM MATCHED EMPLOYER-EMPLOYEE DATA

August 2013

Written by: Christopher Goetz

Working Paper Number:

CES-13-43

Abstract

This study uses worker-level employment data from the U.S. Census Bureau to test whether falling home prices affect a worker's propensity to take a job in a different metropolitan area from where he is currently located. Using a sample of workers from the American Community Survey, I employ a within-MSA-time estimation that compares homeowners to renters in their propensities to relocate for jobs according to data from the Longitudinal Employer Household Dynamics database. This strategy allows me to disentangle the influence of house prices from that of other time-varying, location-specific shocks. Estimates show that homeowners who have experienced declines in the nominal value of their home are approximately 20% less likely to take a new job in a location outside of the metropolitan area that they currently live and work in, relative to an equivalent renter. This evidence is consistent with the hypothesis that housing lock-in has contributed to the decreased labor mobility of homeowners during the recent housing bust.

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:
employ, recession, shift, metropolitan, relocating, household, housing, relocation, home, census employment, unemployed, residence, moving, house, renter, homeowner, relocate, mortgage, housing survey

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:
Metropolitan Statistical Area, Internal Revenue Service, New York Times, National Longitudinal Survey of Youth, Current Population Survey, Survey of Income and Program Participation, Unemployment Insurance, American Community Survey, Longitudinal Employer Household Dynamics, Employer Characteristics File, American Housing Survey, Quarterly Workforce Indicators, Quarterly Census of Employment and Wages, Linear Probability Model

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