Title: Modelling the Gender Pay Gap
1Modelling the Gender Pay Gap
- By Wendy Olsen and Sylvia Walby
- (Part of a 3-part project on Modelling Gendered
Pay and Productivity, EOC 2003-5)
2Publication
- www.eoc.org.ukWorking Paper No. 17
- For the report that was dated 2002, by the same
authors, using similar techniques with 2000 data,
see - http//www2.umist.ac.uk/management/ewerc/equalpay/
walbyolsenreport.pdf
3Introduction
- Re-thinking the dichotomy between human capital
and discrimination - Regression was used.
- Then fixed effects modelling,
- And decomposition of the pay gaps causes.
- Critique of Oaxaca
- Using simulation to do decomposition
- What accounts for the gender wage gap?
4Human capital and discrimination are not mutually
exclusive
- Re-thinking the dichotomy
- Human capital theory is re-estimated
- Part-time work is associated with no rise in wage
- Interruptions are associated with lower wages
- What is the place of institutions?
- Re-interpretation of the coefficients
- One interpretation focuses on the variables
- Other interpretations are suffused with theory,
- E.g. the labour market rigidities
interpretation - And the EOCs discrimination and other factors
interpretation which is misleading
5- Regression results
- The main factors influencing wage rates for women
and men - Female 8.9 lower wages if female
- Education (years) 5.7 higher wages for each year
of FT education - Years of full-time employment (curved) 2.6
higher wages for each year of FT work - Years of part-time employment (curved) 0.8 lower
wages for each year of PT work - Unemployment (years) 2.2 lower wages per year
of unemployment - Family care (years) 0.8 lower wages for each
year of interruptions to employment for childcare
and other family care - Recent education not employer funded 5.9 lower
among those funding their own training
6- Regression results
- Further (institutional) factors influencing wage
rates - Segregation (male percent x10) 1.3 higher wages
per 10 more males in that occupation - Firm size 500 workers 11.7 higher wages if firm
size is over 500 workers - Firm size 50-499 workers 6.2 higher wages if
firm size is 50-499 workers - In public sector 8.0 higher wages if working in
public sector - In union or staff association 6.2 higher wages
if union member - (These are the same regression continued. That
regression also has SIC and REGION in it)
7- Regression results
- The results for female of 9 are re-affirmed
using ten years of data. (See Appendix of EOC
Working Paper No. 17) - Panel data set for 1992/3, 1993/4, 1998/9,
1999/2000, 2000/2001, and 2001/2 from BHPS - I merged the annual work-life histories for the
people who are in this data set continuously or
who enter the data-set as young people later in
the panel. - The work-life history data and annual data are
used together, to re-calculate a fixed-effects
regression, which shows a huge female factor (a)
due to preferences or motivation or
discrimination (Kim Polachek). We calculated
the 9 figure from their technique for estimation
of the gender component of the fixed-effects
individual heterogeneity.
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9The Human Capital Results
Variables Education (Scaled in years) The
length of the working-life that was spent in
full-time work The length of the working-life
that was spent in part-time work The length of
time spent in interruptions of the working-life
for caring and family work Other periods
Unemployment Longterm sick/disabled
periods. Training on the job that is
employer-funded or at the place of
employment Training during the past year that is
not employer funded nor on the premises of the
employer
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14Oaxaca
- Operationalises the dichotomy between human
capital and discrimination - Poor grasp of institutional causes of gender
wage gap (Juhn, Pierce Murphy extension) - Estimates of discrimination unstable and
arbitrary, depending on choice of comparator
men, women, all. (ORansom Neumann) - Inclusion of 3rd term to represent average
improves but does not eliminate problems - Separate regressions omit gender despite its
significance and considerable effect.
15Equations
- Traditional Oaxaca two-term equation
- Mens wage rate relative to womens wage rate
human-capital effect a residual discrimination
effect. - The full decomposition of the wage gap equation
is offered by - ln wm ln wf (Xm - Xf) ?m (?m - ?f)Xf (Eq.
2) - where the Xi's refer to the mean for men and
women of each variable. The ?i are the slope
coefficients for the men and women respectively. - Hence wm/wf exp(Xm - Xf) ?m (?m - ?f)Xf
(Eq. 3)
16Equations
- Oaxaca three-term equation (OR, 1988, 1994)
- Ln (gap1) (Xm - Xf) ? (?m - ?)Xm (? -
?f)Xf (Eq. 4) - productivity differential male wage
advantage female wage disadvantage
17Beyond Oaxaca Originality in the Research So Far
- A single, full (integrated by sex) regression,
with institutional as well as individual factors
included - Gender a variable in that regression
- Heckman to eliminate potential sample selection
bias also done in panel - Simulation to estimate size of components of
gender wage gap
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21Problems with Oaxaca-Blinder
- 1) The labelling of slope and levels components
- (endowments Oaxaca and Ransom 1999
- discrimination vs. productivity, OR 1994)
- 2) Interpretive contradictions
- a) descriptive contradictions, where the
operationalisation of discrimination is found
both in both the discrimination and the
productivity terms - b) normative contradictions, where the approval
of one term has as its dual the disapproval of
the other term
22- 3) Arbitrary reference point of the male wage
equation (Applies only to two-term Oaxaca, not to
3-term version found in OR 1988 Neilsen 2000) - 4) Arbitrary reference point of one category,
e.g. lowest level of educational qualification - 5) Oaxaca discourages adding up the three terms
(or two terms) horizontally to see the net effect
of each associated factor - 6) Not well adapted to the factors other than
human capital inherently individualistic.
23- 7) Does not handle nicely the factors which are
present for one sex but not for the other - 8) Considers womens slopes only in relation to
other womens returns -- but the slope is higher
whilst the intercept is lower than men - 9)Considers mens slopes only in relation to
other men lacks a sex term in equation.
24Summary What makes a difference to rates of pay?
- Gender
- Motherhood (current and former)
- Employment experience (nuanced)
- Part-time (not pro-rata, not neutral, but
negative) - Interruptions for child and other family care
- Training, tenure
- Segregation
- Institutions firm size, public sector, union
membership - Region and industry
25The Next Two Stages of Research
- 1. We have simulated the effects of changing the
values of X-variables, e.g. education, training,
occupational segregation, and the work-histories. - 2. We give results for each type of woman.
- 3. The aggregation of results is costed out (as
a cost-benefit analysis) for 4 stakeholder groups.