Title: Families and employment: Household structure and family formation
1Families and employment Household structure and
family formation
- M. Iacovou A. Skew
- Meeting of the international advisory panel,
12/13th March 2009
2Why are household structure and family formation
interesting?
- In their own right
- Reflecting differences in social norms, economic
conditions, social policy - Related to outcomes
- Housework
- Caring responsibilities
- Equivalised household income (numerator and
denominator)
3Map household structure
- key indicators
- household size
- proportion of female-headed households
- single-adult households (particularly young
single people, - elderly single people
- single parents
- multigenerational and extended families
- stepfamilies
4What if? questions
- What would poverty rates look like in (say) Italy
if Italians had similar living arrangements to
(say) Scandinavians? - Decomposition analysis
- Microsimulation
5Transitions in household formation
- Home-leaving
- Partnering
- Parenthood
- Separation and divorce
- Little work mapping these transitions over new
member states. - Descriptive exercise, also multivariate analysis
to assess the effect of factors such as income,
work and accommodation prices.
6Welfare state typologies
- Next presentation!
- But briefly where are new members located?
- Esping-Andersens typology works poorly in terms
of family formation
7Average household size
Source EU-SILC 2006
8Household size distribution
Source EU-SILC 2006
9Single person households
Source EU-SILC 2006
10Percent aged 65 living alone
Source EU-SILC 2006
11Lone parent households
Source EU-SILC 2006
12Gender attitudes and female labour force
participation
- Emilia Del Bono and Richard Berthoud
13Gender attitudes and female labour force
participation (1)
- European countries differ markedly in terms of
their rates of female labour force participation - To what extent are these difference explained by
- caracteristics of the labour force (age,
education, fertility, etc.) - institutional environment (e.g. the availability
of subsidized childcare) - attitudes towards the family and gender?
- Cross-country comparisons can be particularly
useful in this setting - Previous work on this topic include
- Fortin (2005) uses World Value Surveys 1990,
1995, 1999 and analyses 25 OECD countries. She
finds that perceptions of womens role as
homemakers are closely associated with womens
labour market outcomes and rather stable over
time
14Gender attitudes and female labour force
participation (2)
- ESS offers a nice opportunity to investigate this
question - In particular
- Family and Work and Well-Being module (Round 2)
asks - When jobs are scarce men should have more right
to a job than women" - The Timing of Life module (Round 3) asks
- How much do you approve if a woman has a ft job
while she has children under 3? How do you
think most people would react if a woman they
knew well had a ft job while she had children
aged under 3? - de Henau (2007) uses the ESS Round2 to examine
the effect of children and womens labour force
participation across 23 European countries,
however he uses gender attitudes only as a
control
15Gender attitudes and female labour force
participation (3)
- Still lots to be done!
- For example
- Replicate Fortin (2005) study using ESS Round 2,
the data refers to 2004, it is more up to date - Use Round 3 questions, which are slightly
different and try to capture also what others
think - Every round of the ESS also includes the
so-called 21-items measure of Human Values
(which is supposed to capture individual traits
such as conformity, tradition, benevolence,
universalism, self-direction, stimulation,
hedonism, achievement, power, security) as
additional controls (?) - Try to get at the endogeneity of attitudes using
plausible instruments. Fortin (2009) uses sexual
and political attitudes as an instrument for
gender attitudes. What about religiosity? -
16Characterising countries
17Esping-Andersen 1990, 1999
- Social-democratic
- Universal entitlements, high benefit levels,
support from the state Scandinavian countries. - Liberal
- Means-tested benefits, emphasis on the market as
the means of support US, UK and Ireland - Conservative
- Family-centred benefits, insurance-based systems
Germany, France, Austria, Belgium, Luxembourg.
18Critiques of E-As typology
- Ambiguous cases Britain, the Netherlands and
others - Arguments for additions a fourth world
- Feminist critiques
- Empirical assessments
- Typologies are problematic because parsimony is
bought at the expense of nuance, but especially
because they are inherently static. They provide
a snapshot of the world at one time and do not
easily capture mutations or the birth of new
species. Any typology of welfare regimes
therefore remains valid only as long as history
stands still. (E-A 1999)
19A fourth world?
- Suggestions for additions
- Antipodean (Castles 1996)
- East Asian (Pempel 1989)
- Southern European (Ferrara 1996 Lessenich 1995)
- E-A rejects these calls in E-A (1999)
- But in practice, a majority of researchers
separate out Greece, Italy, Spain and Portugal
from the other Conservative countries (Berthoud
Iacovou 2004)
20Feminist critiques of E-A
- E-A was developed to analyse class relations
not gender. - Decommodification not necessarily the relevant
characteristic for women are concerned - Feminist fixes
- Build gender into mainstream theoretical
frameworks (Orloff 1992) - Start again from scratch (Lewis 1993)
21How well do three worlds work?
- .. they work well for some purposes and less
well for others (BI 2004) - Analysis of poverty, deprivation and inequality
excellent - Analysis of (un)employment and labour markets
reasonable - Analysis of family dynamics alternatives (eg
Catholic/ Protestant, or even North/South do
better). - Addition of fourth Southern European world
always helps - Where do new member states fit in?
- Predict Cyprus and Malta are like Southern
countries - Eastern countries???
22Between- and within-country variances some
initial thoughts
- Mark Bryan
- Institute for Social and Economic Research,
University of Essex -
23Between and within variances (?)
- We want to answer questions like
- Income inequality in Europe is X. How much of
this is because there are rich and poor
countries, and how much because there are rich
and poor people? - Overall employment rate in Europe is Z. But is
it Z in every country, or do they differ? If so,
how much is to do with demographics? What would
differences look like if each country had the
same population composition? - Variance decomposition may not be the best way to
answer these questions. - But we need a framework to model between and
within variation.
24Linear regression framework fixed country
effects
- Consider cross-section for simplicity
- yic(i) xi ? vc(i) ?i
- i indexes people c(i) indexes countries
- Obvious way to proceed is by country-level fixed
effects, i.e. add dummy variable for each country
to represent vc(i). - Interpretation adjusting for population
characteristics, using the Europe-wide average
effect of these characs, differences between
countries are given by vc(i).
25Linear regression framework
- Substantive interpretation of vc(i) omitted
macro/policy variables or more intangible
factors, e.g. culture? - Variance of vc(i) will give us an estimate of
between variance (unconditional if we omit x),
but how meaningful/reliable with only a few
countries? - We cannot include macro (country-level) vars in
the FE regression. But this is not a problem we
can always do a second-step regression of the
estimated country effects on macro
variables, to break up country level effects
into explained and unexplained parts. Again,
what if only few countries?
26Linear regression framework random country
effects
- We might also think of modelling vc(i) as a
random effect (possibly in a more general
multilevel framework). - We could then include macro factors directly.
- (In theory) RE also allows us to generalise
results to new countries (since we estimate the
variance of the vc(i) distribution, sv2). But how
reliable is sv2 estimate with few countries? - Also RE assumes x and vc(i) are uncorrelated.
27Other issues
- Single equation model restricts ? to be same
across countries, which is undoubtedly incorrect.
A model with full country interactions would be
unwieldy. - Variance decomposition is difficult to interpret
when the outcomes is discrete, e.g. poverty. We
could decompose the variance of the latent
propensity to be in poverty (yic(i)), but how
meaningful is this?
28A more general approach
- Separate equation for each country
- yic(i) xi ?c(i) vc(i) ?i
- vc(i) is now regression constant, but cant
really compare due to base category problem. - Can construct various counterfactual scenarios,
e.g. make predictions using reference
characteristics x0. Remaining differences between
countries are then due to differences in ß and v
relate to macro characs. - Compare effects of changes in x0 across countries
and relate to macro characs. - How much does more micro data help us estimate
macro coeffs?