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Social Media, Web, and Panel Surveys: Using Non- Probability Samples in Social and Policy Research

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  • Lehdonvirta, Vili
  • Oksanen, Atte

    (University of Tampere)

  • Räsänen, Pekka
  • Blank, Grant

Abstract

The use of online surveys has grown rapidly in social science and policy research, surpassing more established methods. We argue that a better understanding is needed, especially of the strengths and weaknesses of non-probability online surveys that can be conducted relatively quickly and cheaply. We describe two common approaches to non-probability online surveys – river and panel sampling – and theorize their inherent selection biases: topical self-selection and economic self-selection. We conduct an empirical comparison of two river samples (Facebook and web-based) and one panel sample (from a major survey research company) with benchmark data grounded in a comprehensive population registry. We examine (1) how closely the online samples correspond with the benchmark, and (2) their usefulness in studying a non-demographic subpopulation. The river samples diverge from the benchmark on demographic variables and yield much higher means on non-demographic variables, even after weighting; we attribute this to topical self-selection. The panel is closer to the benchmark. When examining the characteristics of a non-demographic subpopulation, we detect no differences between the river and panel samples. We conclude that non-probability online surveys don’t replace probability surveys, but augment the researcher’s toolkit with new digital practices, such as exploratory studies of small and emerging non-demographic subpopulations.

Suggested Citation

  • Lehdonvirta, Vili & Oksanen, Atte & Räsänen, Pekka & Blank, Grant, 2020. "Social Media, Web, and Panel Surveys: Using Non- Probability Samples in Social and Policy Research," OSF Preprints qrwg4, Center for Open Science.
  • Handle: RePEc:osf:osfxxx:qrwg4
    DOI: 10.31219/osf.io/qrwg4
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    References listed on IDEAS

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    1. Malhotra, Neil & Krosnick, Jon A., 2007. "The Effect of Survey Mode and Sampling on Inferences about Political Attitudes and Behavior: Comparing the 2000 and 2004 ANES to Internet Surveys with Nonprobability Samples," Political Analysis, Cambridge University Press, vol. 15(3), pages 286-323, July.
    2. Lehdonvirta, Vili, 2018. "Flexibility in the Gig Economy: Managing Time on Three Online Piecework Platforms," SocArXiv k3hy4, Center for Open Science.
    3. Jelke Bethlehem, 2010. "Selection Bias in Web Surveys," International Statistical Review, International Statistical Institute, vol. 78(2), pages 161-188, August.
    4. Alexander Coppock & Thomas J. Leeper & Kevin J. Mullinix, 2018. "Generalizability of heterogeneous treatment effect estimates across samples," Proceedings of the National Academy of Sciences, Proceedings of the National Academy of Sciences, vol. 115(49), pages 12441-12446, December.
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