Title: Intergenerational earnings mobility: Changes across cohorts in Britain
1Intergenerational earnings mobility Changes
across cohorts in Britain
- Cheti Nicoletti and John Ermisch
- ISER, University of Essex
- ESRC Research Methods Festival
- Oxford, 2nd July 2008
2Motivation
- Studies on intergenerational (im)mobility examine
the association between childrens and parents
socio-economic outcome (usually income, earnings,
occupational prestige or class). - It is believed that low intergenerational
mobility is indicative of unequal opportunities
between people born in advantaged and
disadvantaged families and that policy should
improve opportunities for those from
disadvantaged backgrounds.
3Motivation
- Notice that two societies could have the same
level of inequality in earnings within a
generation but a completely different level of
intergenerational transmission of earnings. - A society where the relative position of a
person in the earnings distribution is exactly
inherited from the parents one is considered
unfair.
4Intergenerational mobility equation
5Comparing Intergenerational across cohorts in
Britain
- Comparing measure of intergenerational mobility
across children (sons) born in different cohorts
is very difficult because of data comparability
and data availability issues. - It is for example difficult to observe earnings
for both children and their parents for very long
cohort period - Blanden, Gregg, MacMillan (2007, The Economic
Journal) compare NCDS1958 and BC1970 (but the
two datasets have a lot comparability issues) and
find a negative trend in mobility - Ermisch and Francesconi (2002) use the BHPS to
estimate intergenerational mobility in
occupational prestige and find a positive trend - Breene and Goldthorpe (2001, European
Sociological Review) and Goldthrope and Jackson
(2007, British Journal of Sociology) study class
mobility and find little change across the two
generations when considering measures of exchange
mobility, in contrast to the negative trend in
mobility found in Blanden et al. (2004, 2007))
using the same two cohorts.
6- Estimating intergenerational earnings mobility in
Britain - for the period 1950-1972
- We would like to estimate ? and ? in Britain and
check whether there is a trend - PROBLEM Absence of British surveys with
information on both sons and fathers earnings
covering a long period.
7We use the BHPS
- PROBLEM We can observe both sons and their
fathers earnings only if they have been living
together in at least 1 wave during the panel.
This is possible in 12 of the cases in our
sample. - SOLUTION we use a TS2SLS estimator which
combines two separate samples from the BHPS
8The two-sample two-stage least squares (plim
TS2SLS plim TS2SIV)
- The TS2SLS estimator combines two separate
samples from the BHPS - 1st dataset (Full sample) containing information
on sons earnings, and fathers education and
occupational characteristics when sons were 14
years (collected through retrospective questions
to sons) - 2nd dataset (Supplemental sample) containing
information on earnings and occupational
characteristics of potential fathers. - References 2SIV Angrist and Krueger (1992),
Arellano and Meghir (1992), Ridder and Moffitt
(2005), Inoue and Solon (2005)
9Two-sample two-stage least squares estimator
(TS2SLS)
- Combining the two samples
- Estimation of the log earnings equation for
fathers using the supplemental sample (imputation
regression) - xZ?v
- Estimation of the main equation using the full
sample and replacing (imputing) x
10Previous studies on intergenerational mobility
using TS2SLS estimator
- The choice of IV in previous studies is quite
often was - dictated by the few variables available
- Bjorklund and Jantti (1997) use education level
and occupation in Sweden, - Fortin and Lefebvre (1998) use 16 occupational
groups in Canada - Grawe (2004) uses education levels for
Ecuador, Nepal, Pakistan and Peru. - Our potential IV are instead given by
- Hope-Goldthorpe index the Cambridge scale
dummies to distinguish occupations in
professional, managerial and technical, skilled
non-manual, skilled manual and unskilled 19
dummies for socioeconomic groups, education
level and age. (similarly to Lefranc A, Trannoy
A. 2005)
11How to choose the instruments for the imputation
in the first step
- The well-known rule for the choice of the
instruments in the instrumental variable
estimation based on a single sample applies to
the TS2SLS estimation too. - Instruments should be chosen among the ones with
the least correlation with the error in the main
equation and with maximum multiple correlation
with the variable to be instrumented, the
fathers earnings.
12Data requirement
- We need to observe a long run permanent measure
of earnings for both fathers and their children - Earnings observed at too young or too old ages
are not a good proxy of permanent earnings
13Life cycle bias
- Controlling for sons and fathers age in the
intergenerational mobility equation can help in
reducing the measurement error bias. But this
correction is not enough if the earnings growth
is heterogeneous across individuals. - Imposing and upper and a lower bound for sons and
fathers age can be a solution (ex. Blanden et al
2004 and 2007, 30-33 Gershuny 2002, 34-36
Ermsich and Nicoletti 2007, 31-45). - Lee and Solon (2005) suggest to estimate an
intergenerational mobility equation using sons
observed at any age but allowing the elasticity
to vary across cohort and sons age. (See for
example Ermsich and Nicoletti 2007)
14BHPS 1991-2003
- The full sample is given by all men, sons, born
between 1950 and 1972 self-employed or in paid
employment, responding and with a labour income
in last month greater than zero in at least one
wave of the panel and aged 30-45. - The supplemental sample is then given by all men
born between 1930 and 1946.
15First step
Variable Coeff S.E. Variable Coeff S.E.
Log (Hope-Goldthorpe score) cohort 1930-38 0.510 0.123 Manager, cohort 1930-38 0.737 0.106
Log (Hope-Goldthorpe score) cohort 1939-46 0.452 0.112 Manager, cohort 1930-46 0.313 0.078
Education1, cohort 1930-38 0.126 0.073 Foreman/supervisor cohort 1930-38 0.437 0.11
Education1, cohort 1939-46 0.079 0.058 Foreman/supervisor cohort 1939-46 0.078 0.081
Education2, cohort 1930-38 0.395 0.145 No managerial duties cohort 1930-38 0.459 0.089
Education2, cohort 1939-46 0.256 0.096 No managerial duties cohort 1939-46 0.108 0.071
Cohort 1939-46 0.565 0.611 Age 0.259 0.097
Constant -1.599 2.537 Age2 -0.003 0.001
Number of observations 896
R2 0.259 Adjusted R-squared 0.246
16Intergenerational earnings mobility(sons 31-45
and fathers 31-55)
- Second step
- y ? ? x u
- y sons log earnings
- x fathers log earnings
- ?, ? and ? are coefficients
- u is i.i.d (0, s2)
- We estimate ? separately for rolling cohort
groups - 1950-55, 1951-56, 1952-57, , 1967-1972
17 Elasticities and correlations for single year
earnings
18Elasticities and correlations for average
earnings
19Testing for the presence of a linear trend
- Without any control for sons age (neither
considering sons age and age square, nor
bounding the sons age range) the trend is
negative, significant and weak -
- y ? ? x xcoh d u for sons 18-53
- This result is in line with Ermisch and
Francesconi (2002) and Prandy et al (2002) who do
not limit the sons age range
20Variables 1 1 3 3
Coeff SE Coeff SE
x 0.277 0.034 0.323 0.063
x cohort/10 -0.019 0.004 0.020 0.014
ages 0.117 0.052
ages2 -0.001 0.001
agef -0.110 0.055
agef2 0.001 0.001
coh 50-57 0.135 0.142
coh 58-65 0.136 0.086
cohf 18-30 cohf 18-30 -0.068 0.125
cohf 31-38 cohf 31-38 0.018 0.077
_cons 5.387 0.243 4.754 1.372
R2 0.025 0.031
N. Obs. Sons age 9673 19-53 6413 31-45
21Comparing results with those inBlanden et al
(2004)
Variable Coeff S.E. Variable Coeff S.E.
x 0.282 0.085 x 0.331 0.070
x cohort/10 0.067 0.024 xcohort/10 0.019 0.012
Ages 0.031 0.124 Ages 0.018 0.008
Ages2 0.000 0.001 Ages2 -0.001 0.001
Agef -0.004 0.013 Agef -0.009 0.010
Agef2 0.002 0.001 Agef2 0.002 0.001
_cons 4.978 0.607 _cons 4.971 0.493
Cohort period 1960 1972 Cohort period 1956 1972
R2 0.042 0.038
N. obs. 3509 5292
22Conclusions
- The intergenerational mobility does not seem to
have changed much over the cohort period
1950-1972. - The trend does not seem to be linear.
- But when imposing a linear trend between the
1958-1970 we find that it is significant and
negative as in Blanden et al (2004, 2006)
23Extensions for future research
- If the intergenerational transmission differs at
different points of the earnings distribution, it
could be interesting to estimate different
quantile regressions instead of the mean
regression. - The relationship between trend and changes in the
education system across cohorts requires
investigation.