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Working with Response Probabilities

Author

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  • Bethlehem Jelke

    (Leiden University, Institute of Political Science, Albert Verweystraat 21, 2394 TK Hazerswoude-Rijndijk, TheNetherlands.)

Abstract

Sample surveys are often affected by nonresponse. These surveys have in common that their outcomes depend at least partly on a human decision whether or not to participate. If it would be completely clear how this decision mechanism works, estimates could be corrected. An often used approach is to introduce the concept of the response probability. Of course, these probabilities are a theoretical concept and therefore unknown. The idea is to estimate them by using the available data. If it is possible to obtain good estimates of the response probabilities, they can be used to improve estimators of population characteristics.Estimating response probabilities relies heavily on the use of models. An often used model is the logit model. In the article, this model is compared with the simple linear model.Estimation of response probabilities models requires the individual values of the auxiliary variables to be available for both the respondents and the nonrespondents of the survey. Unfortunately, this is often not the case. This article explores some approaches for estimating response probabilities that have less heavy data requirements. The estimated response probabilities were also used to measure possible deviations from representativity of the survey response. The indicator used is the coefficient of variation (CV) of the response probabilities.

Suggested Citation

  • Bethlehem Jelke, 2020. "Working with Response Probabilities," Journal of Official Statistics, Sciendo, vol. 36(3), pages 647-674, September.
  • Handle: RePEc:vrs:offsta:v:36:y:2020:i:3:p:647-674:n:10
    DOI: 10.2478/jos-2020-0033
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