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Published byNorman Randall Modified over 9 years ago
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Paige Hehl, UW Eau Claire Faculty Mentor: Dr. David Schaffer
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Previous Research Some economic researchers have concluded that gender discrimination in the U.S. is essentially gone. Schaffer’s previous research suggested otherwise. Our research using a different set of statistical techniques and an enormous database supports the idea of continuing discrimination against women in the labor market.
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Data Data was obtained from the Current Population Survey (CPS) for the years 1971- 2006. (http://www.census.gov/cps/)http://www.census.gov/cps/ We have approximately 60,000 observations for each year. Used Stata 10 & 11
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Oaxaca Decomposition Regression of wage rate onto years of schooling and potential experience: Differential due to Discrimination Differential due to differences in human capital
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Method 1: Extending Oaxaca Decomposing further to obtain differential due to gender segregation We used three types of occupations A: Occupations with less than 30% female workers B: Occupations with 30-70% female workers C: Occupations with more than 70% female Actual wage gap calculated as A∆= ∑[(N iM /N M )lnW iM – (N iF /N F )lnW iF ]
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A∆= H+D+S H= differential due to differences in human capital D= differential due to discrimination S= differential due to gender segregation H= ∑ β iM (X iM – X iF ) (N i /N) D= ∑(β iM -β iF )X iF (N i /N) S= ∑ {[(N iM /N M )-(N i /N)]lnW iM – [(N iF /N F )-(N i /N)]lnW iF } Need program for more categories
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Results from Decomposing 1971 A∆= 0.546149 (actual logwage gap) H= 0.017139 D= 0.453878 S= 0.075132 S is about 13.8% of A∆ 2002 A∆= 0.281517 (actual logwage gap) H= -0.008705 D= 0.225145 S= 0.06507 S is about 23.1% of A∆
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Method 2:Regression Analysis with Additional Variables Regressed certain variables against the natural log of wages Used years of education, potential experience, fraction-female, average occupation education, and others Restricted the wages between $2 - $200 (an hour) to eliminate some of the variance Used weighted averages
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Additional Variables 500 occupation categories determined by the Census Bureau Fraction-female (within each occupation) Average education (within each occupation) Fraction-Female Coefficients 2006 Fraction FemaleMalesFemales 0-.100.000.11-.20-0.131-0.132.21-.30-0.099-0.132.31-.40-0.130-0.157.41-.50-0.174-0.265.51-.60-0.219-0.279.61-.70-0.275-0.341.71-.80-0.272-0.316.81-.90-0.293-0.318.91-1.00-0.343-0.322
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Interpretations Types of Discrimination Pure Discrimination Gender Segregation Penalty It has always been the case that wages decrease as you move to a more female job The size of the wage gap has increased over time Jobs have become less segregated, but the wage penalty has gotten larger for being in the more female segregated jobs.
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Citations Borjas, George. Labor Economics. 5th. New York, NY: McGraw-Hill/Irwin, 2008. Print. Fluckiger, Yves, and Jacques Silber. The Measurement of Segregation in the Labor Force. Germany: Physica-Verlag Heidelberg, 1999. Print.
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