Responsive and Adaptive Design for Survey Optimization

Author:

Chun Asaph Young1,Heeringa Steven G.2,Schouten Barry3

Affiliation:

1. U.S. Census Bureau. 4600 Silver Hill Road, Washington, D.C. , U.S.A.

2. University of Michigan , 500 S. State Street, Ann Arbor , MI 48109 , U.S.A.

3. Statistics Netherlands, Henri Faasdreef 312, CBS-weg 11, 2492 JP The Hague , The Netherlands .

Abstract

Abstract We discuss an evidence-based approach to guiding real-time design decisions during the course of survey data collection. We call it responsive and adaptive design (RAD), a scientific framework driven by cost-quality tradeoff analysis and optimization that enables the most efficient production of high-quality data. The notion of RAD is not new; nor is it a silver bullet to resolve all the difficulties of complex survey design and challenges. RAD embraces precedents and variants of responsive design and adaptive design that survey designers and researchers have practiced over decades. In this paper, we present the four pillars of RAD: survey process data and auxiliary information, design features and interventions, explicit quality and cost metrics, and a quality-cost optimization tailored to survey strata. We discuss how these building blocks of RAD are addressed by articles published in the 2017 JOS special issue and this special section. It is a tale of the three perspectives filling in each other. We carry over each of these three perspectives to articulate the remaining challenges and opportunities for the advancement of RAD. We recommend several RAD ideas for future research, including survey-assisted population modeling, rigorous optimization strategies, and total survey cost modeling.

Publisher

Walter de Gruyter GmbH

Reference35 articles.

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2. Brick, M. and R. Tourangeau. 2017. “Responsive Survey Designs for Reducing Nonresponse Bias.” In A.Y. Chun, B. Schouten, and J. Wagner (Eds), Special Issue on Responsive and Adaptive Design, Journal of Official Statistics 33(3): 735–752. Doi: https://doi.org/10.1515/jos-2017-0034.10.1515/jos-2017-0034

3. Burger, J., K. Perryck, and B. Schouten. 2017. “Robustness of Adaptive Survey Designs to Inaccuracy of Design Parameters.” In A.Y. Chun, B. Schouten, and J. Wagner (Eds), Special Issue on Responsive and Adaptive Design, Journal of Official Statistics 33(3): 687–708. Doi: https://doi.org/10.1515/jos-2017-0032.10.1515/jos-2017-0032

4. Calinescu, M. and B. Schouten. 2016. “Adaptive Survey Designs for Nonresponse and Measurement Error in Multi-Purpose Surveys.” Survey Research Methods 10(1): 35–47. Doi: http://dx.doi.org/10.18148/srm/2016.v10i1.6157.

5. Chun, A.Y. 2009. Nonparticipation of the 12th graders in the National Assessment of Educational Progress: Understanding Determinants of Nonresponse and Assessing the Impact on NAEP Estimates of Nonresponse Bias According to Propensity Models. University of Maryland, College Park, USA. http://hdl.handle.net/1903/9916.

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