Supplementing Small Probability Samples with Nonprobability Samples: A Bayesian Approach

Author:

Sakshaug Joseph W.1,Wiśniowski Arkadiusz2,Ruiz Diego Andres Perez2,Blom Annelies G.3

Affiliation:

1. University of Mannheim and Institute for Employment Research , Nuremberg , 90478 Germany .

2. University of Manchester , Manchester , M13 9PL United Kingdom .

3. School of Social Sciences , University of Mannheim , Mannheim , 68131 Germany .

Abstract

Abstract Carefully designed probability-based sample surveys can be prohibitively expensive to conduct. As such, many survey organizations have shifted away from using expensive probability samples in favor of less expensive, but possibly less accurate, nonprobability web samples. However, their lower costs and abundant availability make them a potentially useful supplement to traditional probability-based samples. We examine this notion by proposing a method of supplementing small probability samples with nonprobability samples using Bayesian inference. We consider two semi-conjugate informative prior distributions for linear regression coefficients based on nonprobability samples, one accounting for the distance between maximum likelihood coefficients derived from parallel probability and non-probability samples, and the second depending on the variability and size of the nonprobability sample. The method is evaluated in comparison with a reference prior through simulations and a real-data application involving multiple probability and nonprobability surveys fielded simultaneously using the same questionnaire. We show that the method reduces the variance and mean-squared error (MSE) of coefficient estimates and model-based predictions relative to probability-only samples. Using actual and assumed cost data we also show that the method can yield substantial cost savings (up to 55%) for a fixed MSE.

Publisher

Walter de Gruyter GmbH

Reference46 articles.

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2. Ansolabehere, S. and D. Rivers. 2013. “Cooperative Survey Research.” Annual Review of Political Science 16: 307–329. Doi: https://doi.org/10.1146/annurev-polisci-022811-160625.10.1146/annurev-polisci-022811-160625

3. Ansolabehere, S. and B.F. Schaffner. 2014. “Does Survey Mode Still Matter? Findings from a 2010 Multi-Mode Comparison.” Political Analysis 22(3): 285–303. Doi: https://doi.org/10.1093/pan/mpt025.10.1093/pan/mpt025

4. Baker, R., J.M. Brick, N.A. Bates, M. Battaglia, M.P. Couper, J.A. Dever, K.J. Gile, and R. Tourangeau. 2013. Report of the AAPOR Task Force on Non-Probability Sampling. American Association for Public Opinion Research. Available at: https://www.aapor.org/AAPOR_Main/media/MainSiteFiles/NPS_TF_Report_Final_7_revised_FNL_6_22_13.pdf (accessed July 2019).

5. Blom, A.G., D. Ackermann-Piek, S.C. Helmschrott, C. Cornesse, and J.W. Sakshaug. 2017. “The Representativeness of Online Panels: Coverage, Sampling and Weighting.” Paper Presented at the General Online Research Conference.

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