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The Class Ceiling Social Origin Pay Gaps in the Higher Professional and Managerial Occupations Daniel Laurison Based in part on “The Class Pay Gap in Higher Managerial and Professional Occupations” by Daniel Laurison and Sam Friedman, accepted for publication in American Sociological Review 1 Social Class Mobility 2 What is Class position? No two social scientists agree! • Relation to the means of production (Marx) • Education (various Social Sciences) • Income (Economists) • “Big-Class” (dominant Sociologists) • “Micro-Class” (challenger Sociologists) • Social Space (Bourdieu) 3 The Big Classes (EGP/NS-SEC ) 1: Higher managerial, administrative and professional occupations: CEO, Professor, Stock Broker, Doctor, Military Officer 2: Lower managerial, administrative, and professional occupations: Teacher, Nurse, Store Manager, IT consultant 3: Intermediate Occupations: Bookkeeper, Secretary, Teaching Assistant 4: Self-Employed: frequently Plumbers, Carpenters, Hairdressers, Taxi Drivers 5: Lower Supervisory and Technical: Chef, Electrician, Communication Operator 6: Semi-Routine Occupations: Sales & Retail Assistant, Care Worker, Landscaper 7: Routine Occupations: Carpenter, Cleaner, Truck or Bus Driver 8: Never worked or long-term unemployed 4 Reproduction of Privilege 100% 90% 80% 70% 60% 50% 40% 30% 20% 10% 0% In whole UK In Higher Management or Professions Higher Managerial or Professional Parent Lower Managerial or Professional Parent Intermediate, Self-Employed, or Technical/Supervisory Parent Semi-Routine or Routine Occupation, or No Earner Parent 5 2.0 1.8 1.6 1.4 1.2 1.0 0.8 0.6 0.4 0.2 0.0 Over-Representation of the Privileged in Top Jobs Semi-Routine or Intermediate, Self- Lower Managerial or Higher Managerial or Routine Occupation, Employed, or Professional Parent Professional Parent or No Earner Parent Technical/Supervisory Parent 6 Problems with Mobility Studies • Ignores resources beyond single-variable measure of class position • Dominant focus on mobility rates between big “classes,” on access to top jobs. • Might miss potentially important differences between or within specific high-status occupational groups 7 Data and Approach 2014 UK Labour Force Survey: Nationally representative, Government data Class Origin Question: What was the occupation of the main income earner in your household when you were 14 years old? Destination: Only those in elite occupations (NS-SEC 1/EGP 1) Higher managerial, administrative and professional occupations Excluded respondents: in full-time education, not aged 23-69, no parental occupation data 43,444 respondents 6,104 in NS-SEC 1-categorized elite occupations 3,510 with income, origin, AND occupation data 8 Social Mobility into Elite Occupations 4.0 3.5 3.0 2.5 2.0 1.5 1.0 0.5 0.0 Long-Range Mobile Mid-Range Mobile Short-Range Mobile Intergenerationally Stable 9 [email protected]; [email protected] “Micro-Class” Over-Representation 25 20 15 10 5 0 Micro-Stable NS-SEC 1 Origins Gender & Race/Ethnicity in the Workplace Exclusion Tokenism Glass Ceilings Pay/Earnings gaps 11 Main Research Question: A Class Ceiling? Do the upwardly mobile face a “class ceiling” in terms of earnings within higher professional and managerial occupations? 12 The Class Pay Gap (Mean Logged Weekly Earnings in NS-SEC 1 by Social Origin) 6.8 6.7 6.6 6.5 6.4 6.3 6.2 6.1 NS-SEC 1 NS-SEC 2 NS-SEC 3 Parents (Higher Parents (Lower Parents Mgrs & Profs) Mgrs & Profs) (Intermediate Occs) NS-SEC 4 NS-SEC 5 NS-SEC 6 NS-SEC 7 Parents (Self- Parents (Lower Parents (SemiParents employed) Supervisory & Routine Occs) (Routine Occs) Tech) [email protected] NS-SEC 8 Parents (No Earner in Household) Models for Earnings Differences Dependent Variable: Logged Weekly earnings (in £) (also untransformed weekly earnings & also untransformed hourly earnings) I. Demographic & Hours Worked: Age (in years); Age squared; Female; Not White; Country of Birth: reference=England, vs outside the UK, Northern Ireland, Scotland, Wales. II. Educational Qualifications. Degree: reference= University Degree vs PhD, MA, Post-Grad Ed Cert, Other Post-Grad, Higher Ed, A-Levels, GCSEs, Other Qualifications, No Qualifications; Degree Class: reference= 2:2/Lower 2nd Class, vs N/A (e.g. no degree, foreign degree), Pass, Third Class, 2:1/Higher Second Class, 1st Class. III. “Human Capital”: Job-Related Training last 3 months (binary); Job Tenure (in years); Past Health Problems (scale 0-2); Current Health Problems (scale 0-4). IV. Work Context: Public sector (vs private); Industry: reference=Public admin, vs Education & Health, Agriculture, Forestry & Fishing, Energy & Water, Manufacturing, Construction, Distribution, Hotels & Restaurant, Transport & Communication, Banking & Finance, Other services; Firm Size, reference= less than 25 employees, vs 25 to 49, 50 to 499, 500 or more; Work region Professionals (vs Managers). V. Specific Occupation: Specific SOC 2010 code (I let Stata choose the reference category) Origin Earnings Gaps Net of Controls MODEL I MODEL II MODEL III MODEL IV MODEL V ONLY DEMO- ADDING GRAPHIC ADDING HUMAN CONTROLS EDUCATION CAPITAL Origins (vs NS-SEC 1 Parents) NS-SEC 2 (Lower Mgrs & Profs) 0.929** 0.946* NS-SEC 3 (Intermediate Occs) 0.880*** 0.916** NS-SEC 4 (Self-employed) 0.833*** 0.872*** NS-SEC 5 (Lower Supervisory & Tech) 0.872*** 0.911** NS-SEC 6 (Semi-Routine Occs) 0.818*** 0.878*** NS-SEC 7 (Routine Occs) 0.792*** 0.848*** NS-SEC 8 (No Earner in Household) 0.834*** 0.886* 0.947* ADDING WORK CONTEXT 0.955* 0.913*** 0.932** ADDING SPECIFIC OCCUPATIONS 0.974 0.947* 0.870*** 0.899*** 0.917** 0.907** 0.916** 0.937* 0.874*** 0.891*** 0.911** 0.845*** 0.867*** 0.883*** 0.889* 0.881** 0.897* More Earnings Coefficients for Class Origin LOGGED WEEKLY EARNINGS NS-SEC 1 (ALL) NS-SEC 1.1 Short-range Mobile -0.039 NS-SEC 1.2 -0.013 -0.047 Mid-range Mobile -0.080*** -0.077 -0.081*** Long-range Mobile -0.127*** -0.108* -0.135*** Weekly Gross Earnings (untransformed GBP) Short-range Mobile (NS-SEC 2 parents) -40.19 -11.81 -50.75* Mid-range Mobile (NS-SEC 3, 4, 5) -87.33*** -81.65* -86.81*** Long-range Mobile (NS-SEC 6 & 7) -115.38*** -110.99* -117.45*** Hourly Gross Earnings £ Short-range Mobile -1.118 -1.368 -1.072 Mid-range Mobile -2.243*** -2.329 -2.112*** Long-range Mobile -3.495*** -2.98 -3.308*** 798 2421 N 3219 Blinder-Oaxaca Decomposition LOGGED EXPONENTIATED VALUES VALUES P>T NS-SEC 1 origins 6.729 £ 836.4 0.00 NS-SEC 3 to 8 origins 6.582 £ 721.8 0.00 Difference 0.147 115.9% 0.00 “Explained” 0.068 107.0% 44% 0.00 “Unexplained” 0.080 108.3% 56% 0.00 [email protected] Blinder-Oaxaca Decomposition continued CONTRIBUTION TO THE PAY GAP Base Model Controls Age & Age Squared Female Not White Country of Birth Quarter Responded to Survey Paid Hours Worked -0.0351 -0.0049 0.0002 -0.0012 0.0010 0.0032 0.0698 -0.0036 0.00 0.07 0.70 0.59 0.36 0.64 47.4% -2.4% 0.00 0.32 -5.3% 0.0011 -0.0001 -0.0087 0.0019 Work Context Region of Work Industry Public Sector Firm Size Specific Occupation -23.8% -3.4% 0.2% -0.8% 0.7% 2.2% 45.0% Human Capital Current Health Problems Scale Past Health Problems Scale Job Tenure in Years Job-Related training last 3 months P>T -25.0% Education Educational Qualifications Degree Classification % OF DIFFERENCE EXPLAINED 0.7% -0.1% -5.9% 1.3% 0.26 0.81 0.00 0.16 31.2% 0.0222 -0.0039 -0.0065 0.0142 0.0182 15.1% -2.7% -4.4% 9.6% 12.3% 0.00 0.23 0.03 0.00 0.02 Separate Models by Age Group NS-SEC 2 Origins NS-SEC 3-5 Origins NS-SEC 6-8 Origins .6 .8 1 23 to 29 year olds 30 to 39 year olds 40 to 49 year olds 50 to 59 year olds 60 to 69 year olds [email protected] 1.2 1.4 Separate Models by Ethnic Group Short-RangeNS-SEC Mobile2 Origins Mid-Range Mobile 3-5 Origins NS-SEC Long-RangeNS-SEC Mobile6-8 Origins .6 .8 1 Ethnic Minorities Whites 1.2 Separate Models by Gender Short-RangeNS-SEC Mobile2 Origins Mid-Range Mobile NS-SEC 3-5 Origins Long-RangeNS-SEC Mobile6-8 Origins .8 .9 1 Women Men 1.1 Double Disadvantage for Working Class-Origin Women £50,000 £40,000 £30,000 £20,000 £10,000 £0 Women Men Long-Range Mobile Mid-Range Mobile Short-Range Mobile Intergenerationally Stable Class Earnings Gaps by Occupational Group (NS-SEC 3-8 vs Stable) Base model All Controls Lawyers Lawyers Finance Finance Lawyers Public Sector Public Sector Doctors Doctors Public Sector Mgrs & Dirs Business Mgrs &inDirs in Business Mgrs & Dirs in Business IT Professionals IT Professionals IT Professionals Protective Civil Servants Protective Civil Servants Accountants Accountants Protective Civil Servants Business Professionals Business Professionals Other Life Other Science Life Science Business Professionals Engineers Engineers Other Professionals Other Professionals Engineers Finance Doctors Accountants Other Life Science Other Professionals Academics Academics Built Environment Built Environment Built Environment Scientists Scientists Scientists Academics .6.6 .8 .8 1 1.21 1.4 [email protected] 1.2 .6 .8 1.4 1 1.2 1.4 [email protected]; [email protected] Large Private Firms in Inner London 100% 90% 80% 70% 60% 50% 40% 30% 20% 10% 0% 500+ Private firms in Inner London Other firms in Inner London long-range mobile mid-range mobile 500+ Private Firms Other UK Other Firms Other UK short-range mobile all NS-SEC 1 intergenerationally stable [email protected]; [email protected] Large London Firms’ Pay Gaps (no controls) £1,800 £1,600 £1,400 £1,200 £1,000 £800 £600 £400 £200 £0 500+ Private firms in Inner Other firms in Inner London 500+ Private Firms Other UK London Intergenerationally Stable NS-SEC 3-8 Origins Other Firms Other UK [email protected]; [email protected] Pay Gaps Net of Controls, Income Percentile in NS-SEC 1 in Region 500+ Private Firms, Inner London, Base 500+ Private Firms, Inner London, Full Other Firms, Inner London, Base Other Firms, Inner London, Full 500+ Private Firms, Other UK, Base 500+ Private Firms, Other UK, Full Other Firms, Other UK, Base Other Firms, Other UK, Full -20 -15 -10 -5 0 5 The Rest of the Gap? • More sorting within occupations • Cultural Capital – Legitimate or “posh” hobbies, accent, style – Private schooling & elite university attendance • Social Capital – Who you know – “Microclass” effects • Discrimination/Stigma/Homophily • Aspirations & behavior 27 Summary of Key Findings Beyond “access” upwardly mobile face a powerful class ceiling, earning 10 – 20% less. Class-origin differences larger for men, but women face double disadvantage. Education & Sorting effects explain big part of pay gap. 60% of differences “unexplained.” 28 Implications for Class and Mobility Studies – Importing feminist concept of “glass ceiling” provides tools for interrogating hidden class barriers within occupations – Focus on access fails to capture stickiness of class origin – Class position is best captured by multiple measures, not any single variable 29 Thank you! 30