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NEW EVIDENCE ON SEX SEGREGATION AND SEX DIFFERENCES IN WAGES FROM MATCHED EMPLOYEE-EMPLOYER DATA*

December 1998

Working Paper Number:

CES-98-18

Abstract

We assemble a new matched employer-employee data set covering essentially all industries and occupations across all regions of the U.S. We use this data set to re-examine the question of the relative contributions to the overall sex gap in wages of sex segregation vs. wage differences by sex within occupation, industry, establishment, and occupation-establishment cells. This new data set is especially useful because earlier research on this topic relied on data sets that covered only a narrow range of industries, occupations, or regions. Our results indicate that a sizable fraction of the sex gap in wages is accounted for by the segregation of women into lower-paying occupations, industries, establishments, and occupations within establishments. Nonetheless, a substantial part of the sex gap in wages remains attributable to the individual's sex. This latter finding contrasts sharply with the conclusions of previous research (especially Groshen, 1991), which indicated that sex segregation accounted for essentially all of the sex wage gap. Further research into the sources of within-establishment within-occupation sex wage differences is therefore much more important than previously thought.

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economist, payroll, earnings, labor, establishment, hiring, segregated, workplace, discrimination, workforce, segregation, salary, wage effects, effect wages, wage gap, occupation, wage differences, wage industries, associate

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:
Standard Statistical Establishment List, Standard Industrial Classification, Bureau of Labor Statistics, National Science Foundation, Center for Economic Studies, Ordinary Least Squares, National Bureau of Economic Research, University of Maryland, Current Population Survey, WECD, Decennial Census, Census Industry Code, Standard Occupational Classification, BLS Handbook of Methods

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