Title: Social Mix, Neighbourhood Outcomes and Housing Policy
1Social Mix, Neighbourhood Outcomes and Housing
Policy
- SG Firm Analytical Foundations Conference
- 22 April 2008
- Prof Glen Bramley
2Whats this paper about?
- Government policies and rhetoric have placed a
new emphasis on social mix balance in
neighbourhoods - This raises questions about whether such policies
are achieveable sustainable, as well as
whether they are desirable - This contribution focuses on aspects of
desirability, in terms of social, economic and
environmental outcomes - It draws on evidence from a number of studies
- It discusses some of the analytical uncertainties
- And draws out some pointers for policy
3The Research Base
- ESRC Cities research in Edinburgh-Glasgow
(Bramley Morgan, Housing Studies, 2003
others) - Treasury/NRU/Scot Exec Mainstream Services
Neighbourhood Deprivation (Bramley, Evans, Noble
2005) - Scot Exec Educ Dept Home ownership and
educational achievement(Bramley Karley,
Housing Studies, 2007) - Welsh Assembly Government Alternative Resource
Allocation Methods for Local Government
(outcome-based funding model for schools Bramley
Watkins forthcoming) - EPSRC CityForm Consortium, social
sustainability urban form (Bramley Power,
Environment Planning B, 2008 Bramley et al,
Planning Research Conference, HWU 2007) - J Rowntree Cleansweep study of neighbhourhood
environmental services with Glasgow Univ
(Bramley/Bailey/Hastings/Day/Watkins, EURA
Conference, Glasgow, Sept 2005)
4How Social Mix Affects Outcomes
- Poor individuals will have poor outcomes anyway
simple composition effect - Housing market sorts poorest into intrinsically
least desirable areas (selection effect) - Behaviour by poor people (reflecting culture,
expectations) worsens problems (e.g. rubbish,
litter) - Social interactions within neighbourhood
reinforce negative patterns of behaviour (crime,
ASB) low collective efficacy in resisting - Social interactions and cultures within local
institutions reinforce low outcomes (e.g.
schools) - Increased workload on local services not
recognised by resource allocation so performance
suffers - Housing tenure may have some additional effects
e.g.home ownership through stability commitment
5BACK TO BASICS the Cost of Clean Streets in
Different Physical and Social Circumstances
- Glen Bramley David WatkinsHeriot-Watt
UniversityAnnette Hastings, Nick BaileyGlasgow
UniversityRosie DayBirmingham Univ
Research supported by Joseph Rowntree Foundation
6Poor neighbourhoods and environmental problems
- Previous research suggests the risk factors
associated with environmental problems - Physical features open spaces, housing
densities built form (alleys, wind tunnels)
street scape (unfenced gardens, on street
parking) - Economic, social and demographic factors
economic inactivity, high child density,
overcrowding, concentrations of vulnerable people - So can service provision predict and control for
risk?
7S.H.S. Descriptive Analysis
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9Initial Modelling Results (national)
- Worse environmental scores associated with
poverty, social renting, older people, families
(esp lone parent), high child density,
overcrowding, terraced housing, London - Better environmental scores in rural suburban
areas, areas with more flats (?), where adequate
parking, ethnic minorities, higher occupations
growth areas - Modest positive association with service
expenditure (in England, not Scotland)
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11Cleanliness outcomes by street deprivation
12Initial Findings from Case 1
- Deprived areas have a heavier workload (i.e. less
resources) for routine sweeping, but attract more
responsive resources - Deprived areas have more problem-generating
factors non-working population, density,
overcrowding, flats child density - Deprived areas have worse environmental outcomes
- Regression model confirms relationships of
context with outcomes problems establishing
relationship with resources - Work to be extended and refined
13Urban Form and Social Sustainability planning
for happy, cohesive and vital communities?
Paper presented at EURA Vital City Conference,
Glasgow, September 2007
- Professor Glen Bramley
- With Dr Caroline Brown, Nicola Dempsey, Dr Sinéad
Power David Watkins - g.bramley_at_sbe.hw.ac.uk
- EPSRC GRANT NoGR/S20529/01www.city-form.com
14Measuring Social Sustainability
- 8 elements measured all based on responses to
multiple questionse.g. social interaction based
on 13 questions, such as whether they have
friends in neighbourhood, see them frequently,
know neighbours by name, look out for each other,
chat, borrow, etc. - Where possible, combined positives negatives
scaled in natural way (100 would be neutral 0
would be worst possible scores 200 best
possible) - Factor analysis generally confirmed groupings
- -Neighbourhood pride/attachment is best single
representative measure- Closely related to
environmental quality, home satisfaction,
interaction
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17CityForm Findings
- Most social sustainability outcomes (except
service access collective participation) are
worse in more deprived /social rented etc. areas - Modelled effects of socio-economic variables also
show this pattern, although sometimes muted after
controlling for other factors, and sometimes
non-linear/uneven - Socio-economic effects tend to be bigger than
urban form effects although both are important
(also have to allow for demography,
accessibility) - National (S.E.H.) results consistent with
5-city case study-based results
18Social Sustainability by Tenure Class
19Social Outcomes by Deprivation Ethnicity
20Some Simpl(istic) Simulations
Moving Households from Lowest Ownership Areas to
Middle Areas
Moving Households from Highest Deprivation Areas
to Middle Areas
21Comments on Simulations
- Even these simple examples suggest that there can
be modest gains in average scores, simply from
shuffling the pack - Worst areas are eliminated former residents
experience major improvement (Rawlsian
principle) - Some (probably) middling areas see some worsening
- However, this ignores (a) individual change
effects e.g. individuals not only move area but
some also change tenure, or get a job, etc.(b)
interactive deprivation effect from
deconcentration - Therefore overall impact likely to be
significantly positive
22Alternative Resource Allocation Models for Local
Education Services in Wales
- Research undertaken for Welsh Assembly Government
by Glen Bramley and David Watkins(CRSIS/SBE,
Heriot-Watt University, Edinburgh)2007g.bramley_at_
sbe.hw.ac.uk
23Work on School Attainment
- Work grew out of interest in resource allocation
for local services and Where does public
spending go? as well as interest in
neighbourhoods housing - Enabled by major advances in data availability
associated with PLASC/ScotXEd, SATS, LMS, - Fairly standard modelling using data _at_ pupil,
school, small larger neighbourhood levels - Like other work, shows importance of poverty
(FSM), special needs, parental educational
background, etc. - Draws particular attention to effects of
clustering of poverty etc. at school (and assoc
neighbourhood) level - Explores particular role of home ownership
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26Key Findings
- Poverty deprivation are key drivers of
attainment, at both individual and school
(/?neighbourhood) levels - Other significant factors including LAC, SEN,
parental qualifs, family background, mobility
etc. - Evidence that home ownership may have an
additional effect, at individual and school
levels- but closely correlated with poverty in
some cases - It is clearly better to go to a school with fewer
poor kids, even if you are poor, and possibly to
a school with more owner occupiers, even if
parents are not owners. - Search for non-linearities a bit inconclusive,
but sensitivity appears greater in middle range
27What are we trying to achieve?
- Minimum standards approach - a floor level of
attainment for all areas/schools - A convergence approach a certain proportional
reduction in the spread of attainment between
most and least deprived areas/school - Equal attainment for individual pupils with
equivalent initial individual endowment/disadvanta
ge (i.e. trying to neutralise the school or area
effect of disadvantage) - Equal entitlement to (lifetime) educational
resources attainment is mainly relevant via
progression, or later participation in adult,
further or higher education - Maximise percentage attaining (say) 5 A-C at
KS4 across Wales implies allocating resources
at margin where marginal productivity, in terms
of this percentage, is highest social efficiency
vs equity - Incentives approach, whereby schools/LEAs get
some bonus for attaining above a (need-related?)
threshold level
28Outcome based funding model
- Analysis at school (virtual catchment) level
- Standardize school size for settlement size
- Standardize costs given size, spec needs, etc.
- Measure relative disadvantage due to social
factors (in terms of attainment) - Allocate enough extra money to bring predicted
attainment x closer to mean - Given minimum school allocation lowest
observed, feasible x40 (primary)
29Outcome-based needs for primary schools
Note needs formula based on standardized costs
and compensating for 40 of social disadvantage
30Changing Schools Funding
- Wales model shows technical feasibility of
outcome approach - But suggests that full equalization could not be
achieved in short run, even if political will - Initial reaction to this report mixed LAs find
it difficult to agree zero sum game - Disparities between schools ( neighbourhoods)
greater, but LEA formulae allocating to schools
typically even less redistributive - Small rural schools get most funding per pupil,
and are of dubious educational value, but this
issue is sensitive
31Reflections on Resource Allocation
- Poor areas tend to get poorer service outcomes,
across quite diverse kinds of service - Poverty/social deprivation makes the service
provision task more difficult and potentially
costly - Poor areas get more resources of some kinds but
less or the same of others - They do not get enough extra resources to make a
decisive difference to outcomes - Therefore it may appear that there is a perverse
negative relationship of resources with outcomes - Local political resistance to re-allocation of
resources likely to be formidable
32Other approaches to improving school outcomes
- Reduction in poverty thru e.g. tax/benefits,
labour market, minimum wage, etc. (poverty the
strongest predictor of poor outcomes) - Reduction in concentrations of poverty, e.g.
thru planning/regeneration including tenure
diversification( Bramley Karley article in
Housing Studies 2007 argues that owner occupation
at indiv/nhood/school levels raises attainment) - Focused use of special needs resources e.g.
special units for disturbed pupils - Close or amalgamate failing schools
- Earlier intervention, preschool/nursery after
school clubs - Changing curriculum (addressing motivation,
engagement)
33Key analytical and policy challenges
- How far is it a zero-sum game, how far positive
for all? - This depends on significance of area effects,
school effects, interaction effects, behavioural
changes - Do middle classes have to suffer some discomfort
to achieve a more Rawlsian outcome for worst off? - Non-linearities theoretically important,
empirically elusive not necessarily convenient - Possible to simulate both population change and
system change (e.g. school reorganisation)
34More Reflections
- If cost of good services to poor areas is so
high, maybe other approaches should be tried (as
well as redistribution) prevention better than
cure? - Changing neighbourhoods social mix should help,
particularly if there are additional adverse
area concentration effects (as in the case of
schools) - Mechanisms include planning for affordable
housing, mix in new build, tenure diversification
in regeneration, use of LCHO, sales of vacant SR
stock - But this is only feasible in some areas in short
term very long term policy - Engagement, motivation, social capital also
important