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EPUNet Conference Barcelona, 8-9 May 2006

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Title: EPUNet Conference Barcelona, 8-9 May 2006


1
EPUNet Conference Barcelona, 8-9 May 2006
2
Unemployment risks in four European countries
  • Antonio Schizzerotto Mario Lucchini
  •  University of Milano Bicocca
  • Italy

3
Aims of the study
  • To analyse the effects of social classes on risks
    of unemployment and job stability.
  • To check if the main features of the association
    between social classes, risks of unemployment and
    job security are stable across societies with
    different institutional arrangements.

4
Four EU countries
  • Denmark, as representative of countries where the
    State plays an important role in the functioning
    of the whole society.
  • Austria and Italy, as representatives of
    countries where family has a crucial position in
    the institutional arrangements of the society.
  • United Kingdom, as representative of countries
    that attribute great importance to the market in
    the workings of the society.

5
Two hypotheses to be tested
  • There is a strong relation between social class
    and both job security and risk of unemployment.
    In the case of dependent workers, this
    association depends on
  • employment relation
  • level of skill
  • Despite differences in institutional
    arrangements, the above relation should hold
    across the four selected countries.

6
Data
  • European Community Households Panel, eight waves
    (Jan 1994-Dec 2001) information regarding
    employment and unemployment episodes.

7
Methods used for the estimation of unemployment
risks.
  • Model to estimate unemployment risks, we
    specified a random-coefficient Poisson regression
    model. The dependent variable in this model is
    the incidence rate ratio of being unemployed.
    Covariates as class and level of education were
    considered as causal variables.
  • Class structure was represented using a recently
    developed nine-fold class scheme known as ESeC
    (European Socio-economic Classification)
  • Education was used as coded in ECHP, according to
    ISCED scheme.
  • We also controlled for civil status, gender,
    period effects, age, health condition,
    public/private sector of activity.

8
The ESeC class schema
  • The ESeC (European Socio-economic Classification)
    is based on a widely-used social class schema
    devised by John Goldthorpe and Robert Erikson,
    known as the EGP schema.
  • It enucleates nine socio-economic classes,
    resulting from the combination of the following
    factors
  • Occupation, coded according to Isco88(com)
    classification
  • Employment status, used to distinguish between
    employers, the self-employed, managers,
    supervisors and employees
  • Size of organization, used to distinguish between
    large and small employers.

9
The ESeC classes
  • Class 1 Large employers, higher grade
    professional, administrative and managerial
    occupations higher professionals and managers
  • Class 2 Lower grade professional, administrative
    and managerial occupations higher grade
    supervisory and technician occupations lower
    professionals and managers
  • Class 3 Intermediate occupations higher
    clerical, services and sales workers
  • Classes 4 and 5 Small employers and
    self-employed in non-professional occupations
    small employers and self-employed (4) and
    farmers (5)
  • Class 6 Lower supervisory and lower technician
    occupations lower supervisors and technicians
  • Class 7 Lower clerical, services and sales
    occupations lower clerical, services and sales
    workers
  • Class 8 Lower technical occupations skilled
    workers
  • Class 9 Routine occupations semi- and
    unskilled workers.

10
The random-coefficient Poisson regression model
  • We model the number of unemployment episodes
    experienced by an individual year after year.
  • More specifically our dependent variable is the
    number of months of unemployment episodes during
    a year (or wave), standardized by the length in
    months of the overall participation in the labour
    market (i.e. number of months in unemployment
    number of months in employment).
  • Since the total duration of the ECHP is 8 years
    (running from 1994-2001), each individual can be
    repeated until 8 times (from the wave 1 to wave
    8).
  • We implemented a random intercept Poisson
    regression to model dependence and unobserved
    heterogeneity.
  • In our model, the normally distributed random
    intercept for subject accommodates dependence
    among the repeated counts of unemployment
    episodes collected year after year.

11
Methods to estimate unemployment risks.
  • Model to estimate unemployment risks, we
    specified a random-coefficient Poisson regression
    model. The dependent variable in this model is
    the incidence rate ratio of being unemployed.
  • Class and education were considered as
    independent, causal variables.
  • Class structure was represented using a recently
    developed nine-fold class scheme known as ESeC
    (European Socio-economic Classification)
  • Education was used as coded in ECHP, according to
    ISCED scheme.
  • civil status, gender, ECHP waves (assumed as
    expressing period effects), age, health
    condition, public/private sector of activity are
    treated as control variables

12
Methods used for the estimation of job stability.
To estimate job stability we carried out an event
history analysis in order to compute the survival
function of each class in each country.
13
Results of the estimation of unemployment risks
through a random-coefficient Poisson regression
model. Denmark, Italy, Austria and United
Kingdom-ECHP, 1994-2001.
14
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16
(a) reference category p lt0.01 p lt0.05
p lt0.1
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20
ESeC classes and the duration of employment
episodes
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25
Conclusive remarks
  • Education displays a protective effect against
    the risk of unemployment also in the UK. UK is a
    partial ecception but even there tertiary
    education shows this protective effect.
  • Class exerts a quite strong effect on the risk of
    unemployment generally speaking, members of
    classes based on service employment relations are
    less likely to experience an unemployment spell
    than people belonging to classes based on labour
    contract.

26
  • Yet between classes based on labour contract
    some differences can be observed.
  • Namely, the risk of unemployment varies according
    to the level of technical skills the higher the
    technical expertise, the lower the risk of
    unemployment.
  • Sometimes, the protective effect of technical
    skills overcomes the effect of the employment
    relations.

27
  • Moving from incidence rate ratios of
    unemployment to job stability it can be seen
    that, by and large, occupational classes based on
    a service employment relationship display longer
    duration of employment episodes.
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