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Paper presented at Research Methods Festival 2008, St Catherine’s College, Oxford, 2 July 2008
Migration and socio-economic polarisation within city regions
Tony Champion and Mike Coombes [email protected] [email protected]
Acknowledgements: Simon Raybould and Colin Wymer (colleagues at CURDS)
and Joseph Rowntree Foundation (project funder)
Background to the research that is the challenge for data/methods here
• Debate about socio-spatial polarisation in cities and its dynamics
• Two main spatial scales:
- ‘City’ versus ‘suburb’: long-standing decentralisation of better-off
- More localised segregation of rich and poor (‘gentrification’, ‘low-demand area’)
• Migration (residential sorting) seen as important in both: is this still the case?
Aims and scope of paper
• Examine migration’s role in altering the socio-economic patterning of city regions
• Divide task into three separate research questions with distinctive methodologies
• Give a flavour of our result
AND IN SO DOING…• Emphasise new and/or unusual elements of the
research methods used• Demonstrate value (& limitations) of the 2001
Census Special Migration Statistics Set 1, especially NS-SeC table
Data: highlighting innovations in 2001
Data from the 2001 Census on change of address in the pre-Census year
Specifically Special Migration Statistics Set 1, on movement between LAs (lowest level local authority areas in 2001 = unitaries/districts)
Table MG109’s counts of Moving Group Representative Persons (MGRPs) by NS-SeC
‘Moving Group’: One or more persons living in a household on Census night, after being together at a different address one year ago
‘NS-SeC’: National Statistics Socio-economic Classification (replaced SEG in 2001 Census), with some aggregation of categories to raise size of counts and reduce SCAM effect …
Groupings of NS-SeC for this study (4 main socio-economic groups)
1.1 Large employers and higher managerial occupations
Higher M&P
1.2 Higher professional occupations
2 Lower managerial and professional occupations Lower M&P
3 Intermediate occupations Intermediate
4 Small employers and own account workers
5 Lower supervisory and technical occupations Lower
6 Semi-routine occupations
7 Routine occupations
L15 Full-time students Full-time students
L14.1 Never worked Other unclassified
L14.2 Long term unemployed
L17 Not classifiable for other reasons
The three research questions
Q1 Migration between a city and its region: is thecity’s migration balance less favourable forpeople of higher occupational status?
Q2 Migration for zones of a city region: do thewithin-region moves reinforce the existingsocio-economic geography?
Q3 Migration between pairs of zones in a cityregion: does the net flow always move people towards the better-off of the two zones?
The analytical framework
• Analysis of one-year changes of address within City Regions (CR)
• For Q1, the city/suburb distinction is recast as Primary Urban Area (PUA) versus Rest of CR (RCR)
- study covers 27 of Britain’s largest cities • For Q2 and Q3 on more localised segregation,
we use a zone breakdown of the whole CRs of 3 contrasting cities
- London, Birmingham, Bristol
27 large cities* (PUAs in grey) & their RCRs
(in white)
* = largest PUAs that are centres of
City Regions
Q1 Migration between city and its region: is the city’s migration balance less
positive for people of higher status?
Focus on migration flows between ‘cities’ and the rest of their ‘city regions’ (RCR)
Flows expressed as RATIOS of inflow to outflow (cf. NET flows, or migration rates), viz: in/out ratios for broad NS-SeC type of MGRP
‘Cities’ defined as best-fits* of LAs to Primary Urban Areas (PUAs = main built-up areas).
‘City regions’ are best fits* of LAs to GB City Regions as defined by CURDS (1995)
*To allow use of SMS Set 1
In/out ratio for 27 Cities’
exchanges with their RCRs: Higher M&P
MGRPs
inflow to city greater for just 7:
Norwich Reading
Plymouth Glasgow Portsmouth Bristol
Northampton
27 cities ranked on their in/out ratios for exchanges of Higher Managerial & Professional MGRPs with their hinterlands
-0.6 -0.5 -0.4 -0.3 -0.2 -0.1 0.0 0.1 0.2 0.3
Norwich
Reading
Plymouth
Glasgow
Portsmouth
Bristol
Northampton
Newcastle
Southampton
Liverpool
Preston
Cardiff
London
Manchester
Leeds
Sheffield
Edinburgh
Bradford
Brighton
Derby
Nottingham
Stoke
Leicester
Middlesbrough
Coventry
Birmingham
Hull
deviation from unity
OUTFLOW TO HINTERLAND GREATER THAN INFLOW TO CITY
INFLOW TO CITY GREATER
3 main types of relationship between in/out ratio and all 4 broad NS-SeCs,
as exemplified by 3 cities
0.0 0.2 0.4 0.6 0.8 1.0 1.2
Birmingham
Bristol
London
in/out ratio
Higher M&P
Lower M&P
Intermediate
Low1
1
1
32
4
2
2
3
3
4
4
In/out ratio=1.0
So, 3 contrasting CRs on the basis of Cities’ migration exchanges with RCRs
by broad NS-SeC
• Bristol: in/out ratio is around 1.0 (in balance) for all 4 NS-SeC and no clear ranking (NS-SeC rank 2 3 1 4)
• London: in/out ratio is below 1.0 (more moving out of city), but positive association between ratio and social status (NS-SeC rank 1 2 3 4)
• Birmingham: in/out ratio is below 1.0 (more moving out of city), and negative link between ratio and social status (NS-SeC rank 4 3 2 1)
Data/method ‘lessons’ derived from our attempt at answering Q1
• Value of NS-SeC data, especially with the flexibility to group categories to suit research topic
• Value of MGRP over HRP, though as yet there is little research to help interpret this concept
• Value of using in/out ratio rather than migration rate, due to lack of denominator for MGRPs (tests for all persons show high correlation)
• Value of PUA/City Region frame to represent the inner and outer parts of the 21st century city
Q2 Migration for zones of a city region: do the within-CR exchanges
reinforce the existing socio-economic patterns?
• Migration measured in terms of in/out ratio (as for answering previous question)
• For each zone based on its exchanges with all the other CR zones combined, for each of the 4 NS-SeC groupings
• Compared with the presence of that NS-SeC among All Classified residents, by mapping and correlation
• Each of the three case study CRs separately …
3 case study City Regions and their constituent zones
London
Bristol
Birmingham
Example of London (46 zones)
In/out ratio for Higher M&Ps
Higher M&P % All Classified residents
London CR: Scatterplot for Higher M&P Log in/out ratio (x-axis), % classified residents (y-axis)
r = +0.006
0.0
5.0
10.0
15.0
20.0
25.0
30.0
-0.20 -0.15 -0.10 -0.05 0.00 0.05 0.10 0.15 0.20
Log in/out ratio for HMP
HM
P %
Cla
ssif
ied
Re
sid
en
ts
N = 46
Correlations (r) between Log in/out ratio and % classified residents
NS-SeC grouping
London (N=46)
Birmingham (N=60)
Bristol (N=34)
Higher M&P +0.006 +0.314 +0.045
Lower M&P -0.466 +0.304 +0.037
Intermediate +0.566 -0.012 +0.043
Low +0.538 +0.081 +0.268
N = Number of zones. Significance level: 1%, 5%
So, do the within-CR exchanges reinforce the existing socio-economic
geography?
• Overall picture from this analysis: within-CR migration generally in conformity with existing social differences between zones, but not significant in over half the 12 (3 x 4) cases
• Socio-economic patterns in 2001 also result from previous years of within-CR migration, migration with rest of UK, international migration and in-situ change
• Within-CR migration also subject to other influences besides social composition
Data/method ‘lessons’ derived from our attempt at answering Q2
• Value of case studies to reveal different CRs’ contrasting patterns
• Useful demonstration of the heterogeneity of both inner and outer parts of cities, even using these large zones
• Maps, scatterplots and correlations are useful exploratory devices, prompting specific questions about the association between migration balance and socio-economic complexion
Q3 Migration between pairs of zones in a city region: does it move people towards the better-off of the two?
• Dependent variable: net flow of migrants between all pairings of zones in CR (e.g. for London CR, 45 x 46/2 = 1035 cases) for (1) All migrants; (2) Higher M&P MGRPs
• Independent variables: difference between the two zones in each pairing on 15 indicators of zone character (listed below)
• Modelling: backward regression with each case weighted by sum of the two flows
More successful of the modelling resultsvariables measuring change all individual migrants HM&P
variables positively correlated with IMD London Birmingham Bristol Bristol
under 16 + + -
students + - - +
no religion + -
ethnic diversification - - +
down-skilling - -
household income + -
employment rate
employment rate change + -
local job growth -
commuting 10km(+) -
semi-detached price + + -
semi-detached price change -
unoccupied dwellings - + -
green space -
crime + -
Adjusted r2 0.160 0.245 0.523 0.427
Modelling results: how far can the size and direction of net flows between zone pairs be explained by zone differences?
• About half the variance in the case of Bristol CR – for both All and HMPs – but much lower for London and Birmingham especially for HMPs (results not shown)
• Perhaps unsurprising that the multi-dimensional nature of migration is not readily reduceable to a set of high/low parameters (cf. experience of MIGMOD analysis of 1990-91 flows between similar zones)
Modelling results: which indicators of zone differences are significant influences
on net flows between zone pairs?
• 15 indicators in model, covering 5 types of influence: demographic, social, labour market, housing, environmental (reduced from 42 on the basis of inter-correlation)
• % students included in all 4 models, but signs vary; 2001 employment rate is in none; 13 are in 1, 2 or 3 models but not always with same sign
Commentary on modelling results: the example of all migrants in London CR
• Net migration gain is associated with the zones with more students, higher crime, higher incomes and upskilling
• Suggestive of net flows being positively associated with young professionals and upward trajectories
• But low R2 and substantial residuals, notably between Outer S&E and some Inner London zones – see blue lines …
Residuals from London CR’s all-migrants model
(red=smallest, i.e. best-fit; blue=largest)
Commentary on modelling results: the example of all migrants in Birmingham CR
• In contrast to London, the net flow tends to be away from more deprived areas
• Migration gain is negatively associated with IMD-type variables (but also with income and commuting 10+km)
• Gain positively associated with <16s, house price, employment rate change
• But again low R2 & substantial residuals (especially radially from inner Birmingham)
Residuals from Birmingham’s CR’s all-migrants model
(red=smallest, i.e. best-fit; blue=largest)
Data/method ‘lessons’ derived from our attempt at answering Q3
• Innovative analysis of net flow between all pairs of zones to test universality of ‘cascade’ to better-off of the two zones
• Somewhat un clear results from regression analysis; could consider developing composite socio-economic indices
• Mapping of residuals can help identify unexplained patterns (not so successful in prompting other explanatory variables for inclusion)
• Low R2 echoes previous findings on the complexity of migration patterns; could reduce by narrower specification of migrant type, but limited by SMS tables and sample size
Summary of approach and main findings• Paper’s main emphasis on methodology: how to study
migration and socio-economic polarisation in City Regions using 2001 Census data
• Focus on direction of net flow and degree of imbalance between inflow and outflow
• 20/27 Cities lose more HMPs to RCRs than they gain from them; 3 main types of relationship between migration ratio and skill level
• Within-CR migration tends to conform to existing social differences between zones, but ‘r’ is not significant (at 5%) in 7/12* tests (* 4SEC x 3CR)
• Net migration between pairs of zones in London tends to favour the zone with more crime etc, but in B’ham shifts people from more deprived areas
• Greater appreciation of the complexity of migration dynamics: some association with social patterns, but other drivers too
Summary of data/method lessons
• Study illustrates the value of Census SMS data but it is for only one year in every 10
• Many innovations in 2001 Census SMS data, but with varying benefit: + NS-SeC 100%? Moving Group, Reference Person, - SCAM, students
• New measure of in/out ratio needed to deal with lack of denominator for calculating rates for MGRPs
• Greater grasp of applying analytical tools: ranking, mapping, scatterplots, correlation, multiple regression, analysis of residuals
Paper presented at Research Methods Festival 2008, St Catherine’s College, Oxford, 2 July 2008
Migration and socio-economic polarisation within city regions
Tony Champion and Mike Coombes [email protected] [email protected]
Acknowledgements: Simon Raybould and Colin Wymer (colleagues at CURDS)
and Joseph Rowntree Foundation (project funder)