March 17th 2010Nottingham1 Higher education returns and effects of ability composition 1.Motivation...
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Transcript of March 17th 2010Nottingham1 Higher education returns and effects of ability composition 1.Motivation...
March 17th 2010 Nottingham 1
Higher education returns and effects of ability composition
1. Motivation
• Increased higher education participation is likely to have various impacts on returns to degrees
• One channel – through implied changes in composition of different educational groups – has received relatively little attention
• Compositional changes of interest include by family class background and by ‘ability’
• In the current work, we are interested in ability composition
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2. Aims
We will focus on:
(i) The college wage premium(ii) Differences in the premium across different groups
- gender- ability/performance
Claim: Graduate Expansion -> changes in ability composition -> impact on college wage premium (etc) in ways consistent with evidence
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3. Context
HE API in UK shows rapid expansion after mid-1980s,
with growth especially dramatic for women.
See Figure 1.
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Figure 1a: Long-Term Trends in Participation in Higher Education (Age Participation Index (API))
API (%) Source: DfES. The W-Z window (LFS)
1960 1965 1970 1975 1980 1985 1990 1995 2000
10
20
30
40
50
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Figure 1b: Long-Term Trends in Participation in Higher Education (Age Participation Index (API))
API (%) Source: DfES. NCDS – BCS70 cohorts Note: (i) 1977-1989 conceals gender difference W-Z (LFS) 1977 1989 Λ
HE API males 22% 24% 2%pts HE API females 17% 23% 6%pts (ii) Wage observations capture cohort neighbour effects
1960 1965 1970 1975 1980 1985 1990 1995 2000
10
20
30
40
50
Entry interval Wage obs interval
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Figure 1c: Long-Term Trends in Participation in Higher Education (Age Participation Index (API))
API (%) Source: DfES. Span of USR entry cohorts and single HESA cohort 1982-1990 conceals magnitude of female growth
1960 1965 1970 1975 1980 1985 1990 1995 2000
10
20
30
40
50
USR
HESA
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Figure 1c: Long-Term Trends in Participation in Higher Education (Age Participation Index (API))
API (%) Source: DfES. GCS entry cohorts and DLHE cohort
1960 1965 1970 1975 1980 1985 1990 1995 2000
10
20
30
40
50
GCS85
DLHE 2003+
GCS90 GCS95 GCS99
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4. Why did the HE API rise?
Demand-side factors:derived demand (SBTC)GCSE pass rates
Supply-side factors:Increase in places
- finance following student- end of binary divide
Loans system
W-Z: from mid-80s to mid-90s, SS dominated DD factors=> r (specifically, Pg) predicted to fall, cet. par.
s
r
D1D2
S=MC
r
s
S1S2
D=MB
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5. Heterogeneity in ability
The simple model of the previous figures assumes workers are homogeneous and hence abstracts from possibility of compositional changes: note ability bias issue (schooling correlated with ability)
ssH
r
S1=MC1
sL
DL
DH
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A fall in costs can produce a change in the ability composition (and hence in extent of ability bias):
(and also a change in the marginal return: see W-Z QR results)
ssL=sH
r
S1=MC1
DL
DH
S2=MC2
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At the individual level, the issue of the relationship between ability and educational investments when individuals are heterogeneous is well-known and is associated with the problem of ability bias in estimates of returns to education.
At the macro (cohort) level, cohort changes (eg in participation) can impact on estimates of returns through changes in the extent of ability bias across cohorts.
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Assume:
Within a cohort:
Across cohorts: . . .
,w w s a s
+ x (ability diff)
+ ability bias (if econometrician suffers
asymmetric information)
or
HK
s a
g
dw w w da
ds s a dsr r
p
R + value of signal (if employer suffers
asymmetric information)
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Across cohorts:
can change because of changes in:
(i)
(ii)
(iii)
The literature has focused on (i) and (ii) (see Cawley et al., 2000) .
But see Blackburn and Neumark (1991, 1993, 1995) and R
s
a
dw
dsr
r
da
ds
osenbaum (2003).
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The college wage premium (under pure signalling): uniform ability distribution.
*a a a a
ga na
*F a 1 *F a
f a
What happens if HE API grows? There is no change in . But this is a special result under the uniform distribution .
Blackburn and Neumark show that under a triangular distribution, falls . . .
da
ds
da
ds
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Implication: Graduate expansion over cohorts -> compositional change -> a reduction in ability bias (or a lower value to the signal of a degree), ceteris paribus,and hence a lower estimate of the college wage premium.
The US literature on this was not developed further as the Blackburn-Neumark analysis was attempting to explain an increase in the college wage premium at a time of higher college participation.
Rosenbaum (2003) finds evidence supporting the view that compositional changes can explain longer term patterns in the college wage premium in the US. (see pdf . . .)
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6. Evidence on the UK college wage premium over time
(i)Harkness-Machin (1999) was rising in the 80s and constant in
the 90sLikely explanation: SBTC in 80s raised rs and ra;
offset in 90s by graduate expansion
(ii)Walker-Zhu (2008)(LFS) Focus on birth cohorts of 66-68 vs 75-77 (see
Figure 1a, p. 5): API more than doubled.
Result: constant for men (15%) and
rising for women (40 -> 47%)
Conclusion: ra must have been rising to offset what must have been falling rs (and compositional changes)
/dw ds
/dw ds/dw ds
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(iii) What can we learn from the birth cohort studies in Britain?
HE API HE API (%)+4 cohorts1 Men
Women
NCDS 13% (1977) 14% 12-18 34-381958Birth cohort
NCS70 18% (1989) 2 30% ? ?1970Birth cohort
1Eg, entering HE in 1993, graduating in 1996, 4yrs experience by 2000 when £ observed of 1970 birth cohort.2Conceals extent of growth in female participation in HE.
/dw ds
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Predictions:
(a) Reduction in ability bias => fall in estimate of college wage premium, but offset by increases in rs and ra brought about by SBTC etc
(b) Given the much greater expansion in the HE API of women relative to men, we might expect the consequently greater compositional change for women to lead to a relative fall in the college wage premium of women.
for women might fall relative to that for men if:
(i) falls relatively more for women
(ii) falls relatively more for women
(iii) falls relatively more for women; which we
s
a
dw
dsr
r
da
dsexpect.
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OLS CFAMales Coef. s.e. Coef. s.e.Non-degree HE 0.006 0.038 0.007 0.040
UG degree 0.146
∗∗∗0.040 0.146
∗∗∗0.041
PG degree 0.050 0.058 0.052 0.054
λ 0.000 0.001
N.obs. 1497 1497
R² 0.077 0.078
Wald test on parents' education (p-value)
Education equation 0.000
Wage equationa 0.185
Data: BCS70. The dependent variable is the natural logarithm of gross hourly wages, age 30. Wage premia are relative to individuals with 2 or more A-levels. The wage equation also includes a wide set of explanatory variables: see paper.λ are the generalized residuals computed from the ordered probit model for the highest educational qualification achieved. The CFA model is identified by parents' education that is included only in the education equation. The F-test refers to the exclusion of parents' education from the controls in the wage equation (2) in the CFA model only identified by functional form.
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OLS CFA
Females Coef. s.e. Coef. s.e.
Non-degree HE 0.070
∗0.035 0.070
∗0.035
UG degree 0.178
∗∗∗0.035 0.178
∗∗∗0.035
PG degree 0.100
∗∗0.040 0.099
∗∗0.037
λ 0.000 0.000N.obs. 1,422 1422.000R² 0.11 0.111Wald test on parents' education (p-value)Education equation 0.001
Wage equationa 0.833
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HE API HE API (%)+4 cohorts1 Men Women
NCDS 13% (1977) 14% 12-18 34-381958Birth cohort
NCS70 18% (1989) 2 30% 15 181970Birth cohort
Across the 2 cohorts, for men has been remarkably constantwhile for women has fallen dramatically, to be similar tothat for men. Supports hypothesis that compositional changesimportant.
/dw ds
/dw ds/dw ds
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7. Degree class signals
We now consider the premium associated with the award of a distinction to the most able graduates.
Compared to the case concerning the premium for a degree, we expect the premium for a distinction to reflect a relatively strong signalling element. (Note contrast between UK and US: see Arcidiacono et al., 2008.) But HKT interpretation works too.
The question we address is: how is da/ds likely to change following an increase in the HE API?
where now refers to the award of a distinction.
dw w w da
ds s a dsds
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Theory
As HE API increases, da/ds rises and this causes the estimated premium for a distinction to rise, cet. par.. (nb: impact reduced by d↑)
Is this consistent with empirical evidence?
The premium under signalling for a high class degree award:
the uniform ability distribution.
*a a a a
da pa dp
*F a
ˆ
*
F a
F a
a
1
ˆF a
f a
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USR data Ireland, Naylor, Smith, Telhaj (2009)1985 – 1993 graduating cohorts (+ HESA data for1998 leavers)(+ GCS data for 1985 and 1990 cohorts)
Administrative data on full graduate populations•Personal characteristics•Academic background•Family background•University/course information•First Destination Survey (EL-SD)
Problem with individual earnings (balloon surface)
Average occupational earnings (averaged over all years)
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USR data, summary statistics for those in employment based on the 1993 cohort (continued)
Variable Mean MeanDegree Class Males Females
First (I) 0.10 0.07
Upper Second (II.1) 0.45 0.55
Lower Second (II.2) 0.33 0.32
Third (III) 0.07 0.03
Sample size (n) 19476 19978
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Average occupational earnings by subject field and degree class for the 1993 cohort
MALES FEMALES Mean n Mean n
450.28 19476 333.10 19978
Degree Class I 480.14 1909 351.31 1309 II.1 465.25 8791 338.44 10982 II.2 432.62 6471 322.58 6381 III 408.41 1344 319.06 642
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Selected Results of occupational earnings equation for the 1993 cohort
MALES FEMALESVariable Coeff Coeff
Degree class
I 0.038*** 0.037***
II.1 (default)
II.2 -0.054*** -0.042***
III -0.094*** -0.053***
Other -0.080*** -0.079***
Note: Premium for a good degree is 6.0%. Similar to estimate of 6.4% for BCS70 students graduating at about same time. From 1990 GCS data, premium for a good degree is 5.0%
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Degree class coefficient estimates for the 1985-1993 and 1998 cohorts
1985 1986 1987 1988 1989 1990 1991 1992 1993 1998 MalesI 0.003 0.006 -0.007 -0.006 0.001 0.027 0.027 0.042 0.038 0.046II.1 (default)FemalesI 0.012 0.012 0.018 0.028 0.026 0.033 0.025 0.053 0.037 0.067II.1 (default)
Why is this an interesting time period?
HE API 0.14 0.14 0.15 0.15 0.15 0.16 0.16 0.18 0.20 0.32
Correlation between API and Premia (1985 – 1993 cohorts):
(i)First, Males, = 0.81; (ii) First, Females, = 0.79;
(iii) Overall Span (1st to 3rd), Males, = 0.86; (iv) Overall Span, Females, = 0.64.
Over this time period, there is no strong evidence of substantial increases in rs or ra: W-Z show degree returns constant for both men and women at least prior to 1995 graduates.
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Conclusion
Observed changes across cohorts in returns to degrees by gender and in returns by class of degree awarded are consistent with the hypothesis that graduate expansion is the driver, mediated through the implied changes in ability composition across education groups .
Future work aims to examine how these patterns:
(i) have continued to evolve for later cohorts and
(ii) behave over time (with tenure/experience)