enhr housing economics workshop
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ENHR Housing Economics Workshop. - PowerPoint PPT PresentationTRANSCRIPT
School of the Built Environment
Housing Mobility and Tenure Choice with varying constraints and rationing: a model for
English regions built from micro household transition data Prof Glen Bramley
(Heriot-Watt University, Edinburgh, UKContact: [email protected]; +44 (0)131 451 4605)
with Prof Michael White (Nottingham Trent University)July 2011
ENHR Housing Economics Workshop
School of the Built Environment
Overview of Paper
• Paper is about housing tenure choice and outcomes in England
• Reviews literature• Describes general approach and data sources
- micro estimation on BHPS transitions over 7 pairs of waves- macro regional simulation model built on S.E.H., LFS, etc.
• Findings on drivers of mobility, moves to buy and social rent• Simulation model features• Baseline and alternative scenarios• Conclusions
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Previous Literature
• Fundamentals of ‘choice’ to buy or rent• Embedded within wider housing demand – also hhld
formation, quantity/quality of housing services• Affordability & income; permanent income; relative ‘user
costs’• Transaction costs & mobility (length of stay)• Econometric issues around identification • Credit constraints – savings & wealth/age of purchase/• Demographics – age, family type, ethnicity• Tax & inflation effects• Subsidies e.g. Housing Allowances/Benefits• Location – region, market area, labour market conditions -
migration interactions
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Our Approach
• While taking much from previous literature, we see some limitations, esp in British context
• Better to focus on flows – active decision making households - path dependence
• Hierarchical sequential approach (Form/move – Buy – Soc Rent)• Mobility models generate flows & also affect ‘expected length of
stay’• Household formation modelled on similar drivers• Social rented lettings clearly rationed• Market rents, prices, unemployment etc linked at subregional
HMA levelplus, in simulation stage,
• Recognition of physical limits to stock-> feedback Vacs->HHFm, PRS
• Recognition of (re-emergence of ) credit rationing post 2007
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Hierarchical Choice Model
Table 1. Hierarchical/sequential scheme for tenure flows modelling New Household Owner Social Renter Private Renter
Form? Move? Move? Move? Buy? Buy? Buy? Buy?
Social Rent? Social Rent? Social Rent? Social Rent?
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Mobility Rates
Mobility Rates by Household Age-Type and by Tenure, 2002-06
0.0%
5.0%
10.0%
15.0%
20.0%
25.0%
30.0%
35.0%
40.0%
Age
-Typ
e C
ateg
ory
% move in 1 year
Own
Social
Priv Rent
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Household Formation
• Reviewed theory and past research, and highlighted trends from data since early 1990s
• Base period ‘profile’ of new households from S.E.H. & BHPS• Modelled propensity to form new household using BHPS
linked to local/subregional market variables• Key demographic drivers include age (younger), migrancy,
marriage, childbirth• Key economic factors include prices (-0.27) incomes (0.31),
unemp (-0.24)• Social lettings supply (0.26)• Smaller effects from prev tenure, ethnicity, qualifs, hsg type• Model is consistent with previous research including Reading
model but adds some extra elements
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Mobility Models
• Logistic regression to predict 1-year moves by origin tenure• Young are more mobile, esp in rental tenures• Larger households less mobile, tho children & crowding may
trigger moves• Higher (current & perm) income increases mobility in private
market; wealth mixed• Unemployment mixed but mainly positive• Rates in private renting 4-5x other tenures
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Table 3: Effect of different variables on choice to buy by previous tenure (coefficient measuring effect of 1 unit change on log-odds of buying for moving households) Variable description
Short name New to buy Own to buy Social to buy Private rent to buy
Moved area migrant 0.256 -0.402 Migration direction (u-r) migdir2 0.411 Aged <20 oageu20 -1.215 -0.412 -1.396 -0.570 Aged 20-24 oage2024 -0.615 Aged >60 oov60 1.023 No. of children onchild 0.366 0.597 Household size ohhsize -0.145 -0.249 -0.152 -0.953 Single person household osing -0.316 -1.268 Lone parent olpar -0.470 -0.857 Married dmar -1.129 Get married getmar 2.307 0.702 Get un-married getunmar 0.380 Get child getchild 0.440 1.187 Higher education qualifications dhequal 0.211 Working HRP dwork 1.082 0.478 2.452 1.038
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Student dstud -7.146 Weeks unemployed dnjuwks -0.045 -0.012 -0.108 -0.028 Log Income (household £k) ldinchhrk 0.118 0.717 0.277 Wealth £k dwealthki2 0.075 0.012 0.019 0.020 Low Income (<£10k pa) lowinc -1.857 -0.746 -0.636 Number of cars 0.467 0.551 0.374 Area unemployment % asunem -0.013 House price £k lplqk -0.016 User Cost £k pa -0.263 -0.108 -0.252 Social lets % hhd pslets2 -0.363 -0.117 Private rent/ House price % prent2bm -0.192 0.070 Social Rent/ House price % lhpir 0.309 -1.063 Constant const -2.352 0.232 4.745 -0.152 Nagelkerke R Sq 0.657 0.278 0.456 0.445 % correct predictions 90.4 77.8 89.6 82.9
Note: bold type indicates coefficients significant at 10% level or better.
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Mobility and Tenure Choice
• Logistic regression fitted to pooled BHPS data on 1-year transitions
• Movers Buying related to mobility (-, via user cost), age (young -), hhd size (-), children (+), working (+), students (-), unemployment (-), income (+), wealth (+), house prices & int rates (-, via user cost), private rents (+ for PR), soc rents (mixed)
• Movers Social renting related to similar factors, but usually with reverse sign (except students; user cost omitted);migrants (-), young (-), sick/disabled (+); low income (+); crowding (+); supply of social lettings signif (+); priv rents (+ for PR); soc rents (?)
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Forward Forecast
• Model now simulates system forward year-by-year from 2009 to 2021
• Takes inputs from parallel run of Reading Affordability model• Model is recursive – endogenous variables calculated
sequentially with some use of lagged values• Forecasts of household formation and tenure flows and
stocks by household age-type and region• Stock-household reconciliation, affecting vacancies, new
household formation and concealed/sharing households• Model to predict private rents – simple reduced form
regression• Social lettings rationing constraint, now formularised• 9 categories of specific need incl homelessness forecast
each period, based on models for each need
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Figure 6.1: Schematic Picture of Overall Simulation Model
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Stock-Household Reconciliation
• Ex poste, system must satisfy identity relationship:Households=Stock-Vacancies-2nd homes+Sharing Households-Shared Dwellings
• ‘Natural’ vacancy rate (3.5%) in private sector; if a region goes below this, adjustments are made to new household formation by (younger) singles in PRS (equiv to half the difference)
• With corresponding increase in multi-adult households, and also in concealed households and sharing (specific needs)
• Argue that concealed effects bigger than sharing under current conditions
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Private Rents Equation
Table 6.1: Regression Model for Private Rents at Subregional Level 1997-2006 Explanatory variable Coeff B Std Coeff Beta t stat signif
Constant -32.074 -2.562 0.011 Opp cost cap value * int £pw 0.410 0.574 8.913 0.000 Cap value growth 3yr pa £pw -0.013 -0.144 -2.595 0.010 Household income £ pw 0.107 0.210 4.753 0.000 Flow demand % hhd 7.492 0.369 8.395 0.000 Vacancy rate % (priv) 9.085 0.181 4.739 0.000 Model summary
R R Sq Adj R Sq S E Est 0.871 0.758 0.752 22.464
ANOVA Sum of Sq Deg Frdm Mn Sq F Ratio Regression 323047 5 64609 128.029 Residual 102948 204 504.6 Signif Total 425995 209 0.000
In simulation model, vacancy relationship imposed, raising rents where vacancies below natural rate
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Baseline Scenario
• Modified version of Reading model baseline• Income growth curtailed in this period, leading to incomes
nearly 10% lower than trend by 2014• New private build reduced sharply in 2008-2010, (95,000
comps in 2010) recovering to 150,000 by 2012 & 185,000 by 2015
• New social output static at 17,000 pa. • Altho prices and HPIR fall sharply in 2008-9, we apply a
‘shadow price of credit rationing’ in model to represent ‘effective affordability’ (1.9 in 2009, tapering off to 1.10 by 2015).
• Populations are as per Sept 2009 Reading model, but household growth is endogenous
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Baseline ForecastTable 5: Simulated Shares of Home Ownership and Private Renting for English Regions 2004-2021
HomeOwnership %
Region 2004 2009 2014 2021 NE 65.88 61.80 63.21 62.99 YH 69.94 68.37 70.37 70.81 NW 71.75 69.28 70.05 70.29 EM 73.90 72.38 75.30 75.32 WM 70.20 69.17 71.42 71.99 SW 73.78 71.85 74.80 74.24 EE 72.83 71.15 74.42 74.15 SE 74.25 71.76 74.42 74.57 GL 56.84 54.45 59.86 62.03 ENG 69.93 67.69 70.46 70.87 Private Renting % Region 2004 2009 2014 2021 NE 8.48 11.88 10.75 11.77 YH 10.07 13.30 11.79 12.28 NW 8.74 12.01 11.73 12.36 EM 9.13 12.57 10.38 11.34 WM 8.56 11.23 9.51 9.72 SW 12.58 14.07 11.56 12.74 EE 10.71 13.05 10.26 10.95 SE 11.75 14.77 12.35 12.35 GL 17.27 21.41 16.25 14.44 ENG 10.81 14.28 11.95 12.18
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Components of Change in Owner Occupation and User Cost
Components of Change in Owner Occupation, England 2007-2021 (annual flow
numbers)
-200,000
-100,000
0
100,000
200,000
300,000
400,000
2006 2008 2010 2012 2014 2016 2018 2020 2022
Year
Num
ber
New OwnerMove InMove Out
DissolnNet Chg Own
Components of User Cost, England, 2007-2021
-6.00
-4.00
-2.00
0.00
2.00
4.00
6.00
8.00
10.00
12.00
2006 2008 2010 2012 2014 2016 2018 2020 2022
Year
£ 00
0 pa
@ 2
006
pric
es
Price x int ratePrice Growth
Trans cost (PR)User Cost (New)
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Comments on Baseline
• 2004-09 unusual for seeing decline in OO and large rise in PRS
• This will reverse, particularly up to 2016, but later growth of OO slows again as user cost rises
• Net growth quite sensitive to moderate changes in gross flows
• Some regional differences e.g. more persistent shift from OO to PR in poorer regions
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Differing Supply Policy ScenariosHome-Ownership Rate Under Different Supply Policy Scenarios
67.0
69.0
71.0
73.0
2000 2005 2010 2015 2020 2025
Year
Perc
ent o
f Hou
seho
lds
Baseline
High Supply (both)
More LCHO
More SR+LCHO
V Low Supply
Private Renting Rate Under Different Supply Policy Scenarios
9.0
11.0
13.0
15.0
2000 2005 2010 2015 2020 2025
Year
Perc
ent o
f Hou
seho
lds
Baseline
High Supply (both)
More LCHO
More SR+LCHO
V Low Supply
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Differing Financial Contextual Scenarios
Home-Ownership Rate Under Different Contextual Scenarios
66.0
68.0
70.0
72.0
74.0
2000 2005 2010 2015 2020 2025
Year
Perc
ent o
f Hou
seho
lds
Baseline
Less Credit Rat
Persistent Credit Rat
Higher Social Rents
More Inequality
V Low Supply & CR
Private Renting Rate Under Different Contextual Scenarios
7.0
9.0
11.0
13.0
15.0
2000 2005 2010 2015 2020 2025
Year
Perc
ent o
f Hou
seho
lds Baseline
Less Credit Rat
Persistent Credit Rat
Higher Social Rents
More Inequality
V Low Supply & CR
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Backlog NeedUnmet Need Rate Under Different Supply Policy Scenarios
4.00%
6.00%
8.00%
10.00%
2000 2005 2010 2015 2020 2025
Year
Perc
ent o
f Hou
seho
lds
Baseline
High Supply (both)
More LCHO
More SR+LCHO
V Low Supply
Unmet Need Rate Under Different Supply Policy Scenarios
4.00%
6.00%
8.00%
10.00%
2000 2005 2010 2015 2020 2025
Year
Perc
ent o
f Hou
seho
lds
Baseline
Less Credit Rat
Persistent Credit Rat
Higher Social Rents
More Inequality
V Low Supply & CR
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Scenario Impacts
• Overall new build supply makes relatively little difference to tenure outcomes; somewhat counter-intuitive
• Priv renting mainly mirror image• Main reason is effective quantity rationing in private sector,
suppressing marginal household growth at expense of private rental sector
• Providing more subsidised housing does impact on tenure, e.g. more LCHO->more OO, but quite small impact even in medium term; more social renting would displace private renting.
• Contextual financial conditions, esp credit rationing, would have bigger effect – persistent CR would see OO stalled or falling
• Inequality – not big effect at level modelled• Rents – effects shown may be too strong (?)
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Concluding comments
• Findings of both stages of modelling support need take account of institutional & quantity rationing effects
• Nature and extent of recent changes go beyond conditions observed in base period (2003-07); hence estimated functions not sufficient to deal realistically with some of strains on system; need for additional feedback mechanisms in simulation
• General need to measure & model credit rationing & operation of private rented sector more effectively
• General supply policies have less impact on tenure than expected, although they do help to reduce need (gradually)
• Credit rationing has bigger effects on both tenure and need• Maybe governments should be more concerned with need
outcomes than with tenure per se