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Adaptive mixed-mode design WP1

ROME April 11 th | 12 th 2019 MIMOD Mixed-Mode Designs for Social Surveys FINAL WORKSHOP. Adaptive mixed-mode design WP1. Barry Schouten Statistics Netherlands (CBS). Adaptive mixed-mode survey design (ASD).

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Adaptive mixed-mode design WP1

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  1. ROME April 11th | 12th 2019 MIMOD Mixed-Mode Designs for Social Surveys FINAL WORKSHOP Adaptive mixed-mode design WP1 Barry Schouten Statistics Netherlands (CBS)

  2. Adaptive mixed-mode survey design (ASD) • Adaptive survey design optimizes quality-cost trade-offs by differentiating effort to different (relevant) population strata. • In MIMOD, differentiation of effort is focussed at the choice of mode strategy per population stratum. • Objectives of WP1 mixed-mode ASD: • Make an inventory of ASD implementations in ESS countries; • Structure the decisions/steps towards an mixed-mode ASD; • Illustrate using two case studies; MIMOD project - Mixed-Mode Designs in Social Surveys Rome, 11-12 April 2019

  3. WP1 MIMOD survey • Findings from WP1 survey: • Mixed-mode ASD implemented only at Stat Netherlands; • ASD is a relatively unknown strategy to balance quality and costs. Eight countries indicated in survey they were unsure whether ASD is applied; • Potential reasons: • Implementation demands flexible case management system across modes; • Relatively weak available auxiliary data to stratify the population; • Mostly theoretical approach without many success stories; MIMOD project - Mixed-Mode Designs in Social Surveys Rome, 11-12 April 2019

  4. ASD steps to implementation • Key ingredients of ASD: • Explicit quality and costs metrics; • Relevant auxiliary data; • Design features/interventions • In general: All possible elements of data collection strategy; • In MIMOD: Modes; • Optimization strategy, e.g. • Case prioritization; • Mathematical optimization; • Stopping rules based on quota MIMOD project - Mixed-Mode Designs in Social Surveys Rome, 11-12 April 2019

  5. ASD steps to implementation – checklist • Identify priorities; • Identify major risks: • Consider risk of incomparability in time; • Consider risk of incomparability between subgroups; • Consider risk of budget overrun and heavy interviewer workloads in follow-up modes; • Define quality and cost indicators; • Consider nonresponse indicators; • Consider measurement error indicators; • Consider cost indicators; • Define decision rules from: • Trial-and-error; • Case prioritization; • Quota; • Mathematical optimization; • Modify the survey design and monitor the outcomes; • Develop a dashboard for survey errors; • Develop a dashboard for survey costs; • Compute estimates; • Document; MIMOD project - Mixed-Mode Designs in Social Surveys Rome, 11-12 April 2019

  6. ASD case study – Health Survey/EHIS – priorities and risks • Key design feature: yes/no F2F follow-up to web nonrespondents • Main priorities: • Acceptable and similar response rates among relevant population subgroups • Sufficient precision on annual survey estimates • Costs satisfying a specified budget • Main risks: • Incomparability in time • Unpredictable CAPI workload due to varying monthly and annual web response rate • Incomparability between different population subgroups of interest MIMOD project - Mixed-Mode Designs in Social Surveys Rome, 11-12 April 2019

  7. ASD case study – Health Survey/EHIS – quality and costs • Objective: • Maximize coefficient of variation (CV) of response propensities (combines R-indicator and response rate) • Response propensities modelled by age, income, urbanization, type of household, ethnicity • Constraints: • Aminimum annual total number of about 9500 respondents was requested • An upper limit of 8000 was imposed to the number of nonrespondents that are sent to CAPI, as a proxy for a budget constraint • An upper limit of 18000 persons was set to the sample size • TO DO: Inclusion of constraint on mode-specific measurement bias MIMOD project - Mixed-Mode Designs in Social Surveys Rome, 11-12 April 2019

  8. ASD case study – Health Survey/EHIS – optimization Stratification based on classification tree of web response MIMOD project - Mixed-Mode Designs in Social Surveys Rome, 11-12 April 2019

  9. ASD case study – Health Survey/EHIS – optimization Optimal allocation probabilities of web nonrespondents to F2F follow-up were determined based on mathematical optimization. Per monthallocationprobabilities are rescaled to guarantee a fixed F2F workload. CV uniform design = 0.158 CV adaptive design = 0.116 MIMOD project - Mixed-Mode Designs in Social Surveys Rome, 11-12 April 2019

  10. Concluding remarks • Adaptive mixed-mode survey design offers a flexible way to balance quality and budget • Holds true especially in sequential designs with more expensive (interviewer) modes as optional. • Further within mode differentiation (timing and number of calls/visits) is possible. • However: • Account of both representation and measurement is crucial; • A flexible case management system and monitoring is required; • Future: • May be combined with re-interview designs (WP2) • May be combined with sensor measurements/data (WP5) MIMOD project - Mixed-Mode Designs in Social Surveys Rome, 11-12 April 2019

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