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1 Modelling with SAGE: lessons and future plans Jane Falkingham & Maria Evandrou ESRC Centre for Population Change University of Southampton BSPS Annual.

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Presentation on theme: "1 Modelling with SAGE: lessons and future plans Jane Falkingham & Maria Evandrou ESRC Centre for Population Change University of Southampton BSPS Annual."— Presentation transcript:

1 1 Modelling with SAGE: lessons and future plans Jane Falkingham & Maria Evandrou ESRC Centre for Population Change University of Southampton BSPS Annual Conference, University of Sussex 11 th September, 2009

2 2 Outline Introduction Overview of the SAGE microsimulation model Challenges and lessons The Future

3 3 Introduction ESRC Research Group ‘Simulating social policy in an Ageing Society’ (SAGE) funded 1999-2005; originally based at LSE and KCL (Falkingham, Evandrou, Rake & Johnson) Main aim: “to carry out research on the future of social policy within an ageing society that explicitly recognises the diversity of life course experience” –Substantive research on the life course –Development of a dynamic microsimulation model –Exploration of alternative policy options

4 4 Simulating life course trajectories to 2050: the SAGE Model Project likely future socio-economic characteristics of older population –Family circumstances –Health & dependency –Financial resources Project future demand for welfare benefits & services among older people Assesses impact of social policy reform scenarios

5 5 Overview of characteristics of the SAGE Model Base population: 0.1% of GB population = 53,985 individuals Partially closed (internal marriage market) Transitions – both deterministic and stochastic Discrete time (rather than continuous) Time based processing (rather than event based) C++ Efficiency in processing → quick run times

6 6 Contents of the SAGE Model Demographic –Mortality –Fertility –Partnership formation –Partnership dissolution Health –Limiting long-term illness –Disability Employment –Paid work –Unpaid work (informal care) Earnings Pensions –Public –Private Other Social security transfers –Pension Credit, disability living allowance, attendance allowance

7 7 SAGE Model Base population 10% sample of 1991 Household SARs and 5% of institutional residents from 2% Individual SARs plus Additional characteristics Data matching / Donor imputation –Duration of partnership (BHPS) –Missing labour market characteristics –Pension contribution & caring histories (FWLS) Regression imputation –Aligning limiting long-term illness (QLFS)

8 8 ABC donorrecipient SARsBHPS Duration of partnership Matching variables Donor Imputation: eg duration of partnership

9 9 SAGE Model Transition Probabilities Mortality ONS LS, GAD Fertility & Partnership BHPS, GHS HealthQLFS DisabilityBHPS Employment QLFS EarningsBHPS Pension scheme membershipFRS DLA and AABHPS

10 10 SIMULATION INPUT (BASE) DATA OUTPUT DATA SAGE Model programming structure POPULATION EVENT LIST LOG FILE SCRIPT FILE CONSOL E 1991 1993 1995 1997 1999

11 11 Challenges Technical –Validation –Alignment (fig 1a, 1b) Operational –Timeliness –Maintenance –Sustainability

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14 14 Lessons Microsimulation models are resource hungry –Data –Human resources (DWP MDU c.20; SAGE 1fte programmer and 1fte analyst) Ideal team involves range of skills –At a minimum need demographer, economist, statistician/ operational researcher, social policy analyst and computer scientist

15 15 Lessons Time spend in efficient programming reaped rewards in short run times Minimising ‘embedded’ parameters maximising ‘what if’ scenarios Desktop user model increases flexibility Sharing expertise across modelling groups (PENSIM, SESIM, MOSART, DYNACAN, DYNAMOD) But No quick fix, every model and every social system different

16 16 Future plans Development of dynamic multi-state population model within CPC (ESRC) Collaboration with University of Southampton colleagues in Centre for Operational Research, Management Science and Information Systems (CORMSIS) and Institute for Complex Systems Simulation (ICSS) on updating and extending SAGE model (EPSRC) Incorporation of uncertainty and expert opinion through Participative Modelling

17 17 Selected publications M. Evandrou and J. Falkingham (2007) ‘Demographic Change, Health and Health-Risk Behaviour across cohorts in Britain: Implications for Policy Modelling’ pp. 59-80 in A. Gupta and A. Harding (eds.), Modelling Our Future: Population Ageing, Health and Aged Care, International Symposia in Economic Theory and Econometrics, 16, Elsevier. M. Evandrou, J. Falkingham, P. Johnson, A. Scott and A. Zaidi (2007) ‘The SAGE Model: A Dynamic Microsimulation Population Model for Britain’ pp. 443-446 in A. Gupta and A. Harding (eds.), Modelling Our Future: Population Ageing, Health and Aged Care, International Symposia in Economic Theory and Econometrics, 16, Elsevier. A. Zaidi, M. Evandrou, J. Falkingham, P. Johnson and A. Scott (2009) ‘Employment Transitions and Earnings Dynamics in the SAGE Model’ pp. 351-379 in Zaidi, A. and Marin, B. (eds) New Frontiers in Microsimulation Modelling Aldershot: Ashgate.


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