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Session 2: Modelling Social Segregation

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Title: Session 2: Modelling Social Segregation


1
Modelling Segregation Using Multilevel Models
FSM in England 2001-6
Session 2 Modelling Social Segregation Monday
30th June 2008
2
Outline
  • Motivation the importance of segregation
  • Research questions
  • Data FSM obtained from PLASC
  • Traditional index approaches
  • Problems with an index approach
  • Model-based approach
  • Linking the model-based approach to indexes
  • Applying the model-based approach
  • Extensions of the model-based approach
  • The Composition of Schools in England (June 2008)

3
Motivation are we become a segregated society?
EG in relation to schools
Virtuous and Vicious circles
  • Following 1988 Education Reform Act with emphasis
    on choice, league tables, competition expectation
    of INCREASED segregation

Choice
increased polarization in terms of ability
increased polarization in terms of socio-economic
background poverty ethnicity etc
Choice
4
Research Questions
  • FSM eligibility Only statutory available
    information on economic disadvantage
  • Has school FSM segregation increased?
  • Has LA segregation increased?
  • Has segregation been differential between
    different types of LAs
  • Which currently are the most segregated LAs in
    England?

5
FSM the data
  • Source Pupil Level Annual School Census
  • Outcome Proportion of intake Eligible for FSM
  • Intake Year 7 of the national curriculum in
    2001-2006,

6
Greater than 25 departure from 6 year median
7
FSM Eligibility criteria
FSM Only statutory available information on
economic disadvantage
  • The current eligibility criteria are that parents
    do not have to pay for school lunches if they
    receive any of the following
  • Income Support
  • Income-based Jobseeker's Allowance
  • Support under Part VI of the Immigration and
    Asylum Act 1999
  • Child Tax Credit, provided they are not entitled
    to Working Tax Credit and have an annual income
    (as assessed by HM Revenue Customs) that does
    not exceed 14,155
  • the Guarantee element of State Pension Credit.
  • Children who receive Income Support or
    income-based Job Seeker's Allowance in their own
    right

8
Measuring segregation traditional Index-based
approaches EG D index
Segregation or diversity indexes have a long
history (e.g. Wright 1937) and there are a lot of
them! Duncan and Duncans (1955) D ones of the
most popular
fsmi is number of pupils in school i eligible
for FSM and nonfsmi is number not eligible FSM is
the total number of pupils eligible in LEA
NONFSM is number not eligible D- 0, schools are
evenly mixed 0.3 30 of pupils move to get
evenness
NB based on OBSERVED proportions and little or
nothing is know about the sampling properties of
segregation measures (Reardon and Firebaugh,
2002, 100)
9
The need to go beyond an Index
Consider a pair of schools where we measure
proportion eligible for FSM and define
segregation as the absolute difference between
the pair Diff Index p1 p2
What values can we get for Index when there is no
real change, just stochastic fluctuations? Simula
te data and calculate Index when no real
change - 3000 pairs of schools, representing
two time points - true underlying proportion is
0.15 for both time points - no of pupils in
entry cohort in each school is 20 (n)
Mean of distribution is 0.079 Apparent
substantial change!
10
Expected value of the Difference Index(if just
stochastic fluctuations)
where is underlying proportion, N is number
of pupils in each school.
Diff of 3 even when n 200
The same thing applies to other Indices.
11
  • E the expected value for D if there was NO
    segregation
  • Structured higher D when small schools and more
    extreme proportion

12
Model-based approaches
  • Traditional index construction uses definitions
    based upon observed proportions.
  • By contrast, a statistical model-based approach
    allows us to make inferences about underlying
    processes by allowing random fluctuations that
    are unconnected with the difference of interest
  • Extract parameters (signal) from the
    stochastic noise
  • Either use parameters as natural measure of
    segregation OR simulate from parameter and use
    indices after taking account of random
    fluctuations
  • Moreover Multilevel model .

13
Benefits of multilevel approach
  • Explicit and separate modelling of trends and
    segregation fixed part of model gives general
    trend variance between schools gives segregation
  • Simultaneous modelling of segregation at any
    level eg decreasing at LA (local economy?), but
    increasing School (admission policies?)
  • Segregation for different types of areas not
    just variances, but variances as a function of
    variables
  • Explicit modelling of binomial fluctuations
  • Confidence intervals
  • BUT the approach is retrograde, and of no clear
    practical value (Gorard, 2004)

14
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15
Results from simple model
Logit -1.84 when transformed median of 0.137
(95 CIs 0,133 and 0.142) and mean of 0.182
(0.177 and 0.187)
Significant between school segregation Equivale
nt to a D of 0.374 (see next slide)
Distributional assumptions for school differences
16
Linking models to indexes
  • Using model parameters we can derive expected
    values of any function of underlying school
    probabilities
  • Consequently, derive index by simulation from
    model parameters.

EG Converting logit Variance to D (simulate 500k
Logits with a given underlying mean and variance
convert to proportions, and calculate Index)
Variance of 0.7 equals D-Index of 0.30
17
Behaviour of the indexesUsing simulation

18
Gorard G index

Note how a change can be either due to changing
dispersion or mean
19
Back to Results from simple model
Logit -1.84 when transformed median of 0.137
(95 CIs 0,133 and 0.142) and mean of 0.182
(0.177 and 0.187)
Significant between school segregation Equivale
nt to a D of 0.374
Distributional assumptions for school differences
20
Results for simple model repeated for each entry
cohort 2001-2006
Segregation changes smaller than uncertainty
Median small improvement
21
Three-level model partitioning between LA, and
between school variance
  • 3 Changes
  • Pupils (i) in schools (j) In LAs (3)
  • Average LA difference School difference
  • Between LA difference
  • Within LA, between school
  • Modelling at two scales simultaneously

22
Results for 3 level model
  • 3 level model applied to each cohort separately
  • compared with Goldstein and Noden (earlier and
    overall school and not entry cohort)
  • Greater segregation between schools than between
    LAs
  • LAs trendless fluctuations
  • Continued increasing between-school segregation

23
Area characteristics 1
  • Are LAs that are selective (Grammar/Secondary)
    more segregated than totally Comprehensive
    systems?
  • 3 level model, with a different variance for
    schools within different LA characteristics
  • Average FSM
  • - for English pupils living in a non-
    selecting LA
  • - for English pupils living in a selecting
    LA
  • Between LA variance
  • Within LA
  • - between school variance for schools located in
    a non-selecting LA
  • - between school variance for schools located in
    a selecting LA

24
Results for Non and Selecting LAs
  • Schools in Selecting areas are more segregated
  • Slight evidence of an increase
  • Pupils going to school in Selecting
  • LAs are less likely to be in poverty
  • Slight decline in poverty in both types of area

25
Area characteristics 2
  • Is there more segregation in areas that are
    selective and where less schools are under LA
    control in terms of admission policies?
  • Variance function for Selective/Non-selective,
    structured by the proportion of pupils in an LA
    who go to Community or Voluntary Controlled
    schools (contra Voluntary Aided,Foundation,
    CTCs, Academies)
  • FSM over the period 2001-6
  • Average FSM in selecting and non- selecting
    LAs and how this changes with degree of LA
    control
  • Between LA variance
  • Within LA between schools
  • - variance function for non-selecting LA
  • - variance function for selecting LA

26
Results for Non and Selecting LAs
  • Schools in Selecting areas are more segregated
  • Segregation decreases with greater LA control for
    both types of LA
  • Pupils going to school in Non-Selecting LAs with
    low LA control are more likely to be in poverty

27
Area characteristics 3
  • Which of Englands LAs have the most segregated
    school system?
  • Model with 144 averages and 144 variances, one
    for each LA!

28
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29
LAs with highest segregation (not including
estimates lees than 2 SE)
30
Extensions of the model-base approach
  • multi- categorical responses eg ethnic group
    segregation.
  • Multiple and crossed (non-nested levels) eg
    schools and neighbourhoods simultaneously
  • Multiple responses in a multivariate model eg.
    model jointly the variation in the proportion FSM
    proportion entering with high levels of
    achievement
  • Modelling spatial segregation with MM models

31
The Composition of Schools in England
  • What they did
  • Calculate D for LAs in 1999 and 2007 (ignoring
    sampling variability)
  • Regress D for LAs on variables EG prop of LA in
    Grammar schools prop of faith schools, prop with
    FSM compare R2s
  • What they found
  • The level of FSM segregation increased for most
    LAs, but the average increase was relatively
    small.
  • Levels of FSM primary segregation more
    associated with the prop of FSM than any other LA
    characteristics.
  • Levels of FSM secondary segregation more
    associated with the proportion in grammar schools
    than any other LA characteristics.
  • Some difficulties
  • Sampling variability and n
  • ignores the nature of the Index that a more
    extreme proportion will produce higher D (eg
    Poole highest increase in segregation but also
    highest drop in FSM 1999-2007) scale artefact
  • - school size differs by type, and D index
    related to size of school
  • Levels no recognition of within and between
  • - eg does not address is there more segregation
    among schools within LAs for faith schools
  • Regression models
  • -Focus on R2s, but variation in D that cannot
    be explained, again not taken account of size

32
References
  • Allen, R. and Vignoles, A. (2006). What should an
    index of school segregation measure? London,
    Institute of Education.
  • Duncan, O. and B. Duncan (1955). A methodological
    analysis of segregation indexes American
    Sociological Review 20 210-217.
  • Hutchens, R. (2004). One measure of segregation.
    International Economic Review 45 555-578.
  • Goldstein, H. and Noden, P. (2003). Modelling
    social segregation. Oxford Review of Education
    29 225-237
  • Gorard, S. (2000). Education and Social Justice.
    Cardiff, University of Wales Press.
  • Gorard (2004) Comments on 'Modelling social
    segregation' by Goldstein and Noden, Oxford
    review of Education, 30(3), 435-440
  • Reardon, S and Firebaugh, G (2002) Response
    segregation and social distance- a generalised
    approach to segregation measurement Sociological
    Methodology, 32, 85-101.
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