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Estimation Techniques for Ordinal Data in Multiple Frame Surveys with Complex Sampling Designs

Maria del Mar Rueda, Antonio Arcos, David Molina and Maria Giovanna Ranalli

International Statistical Review, 2018, vol. 86, issue 1, 51-67

Abstract: Surveys usually include questions where individuals must select one in a series of possible options that can be sorted. On the other hand, multiple frame surveys are becoming a widely used method to decrease bias due to undercoverage of the target population. In this work, we propose statistical techniques for handling ordinal data coming from a multiple frame survey using complex sampling designs and auxiliary information. Our aim is to estimate proportions when the variable of interest has ordinal outcomes. Two estimators are constructed following model†assisted generalised regression and model calibration techniques. Theoretical properties are investigated for these estimators. Simulation studies with different sampling procedures are considered to evaluate the performance of the proposed estimators in finite size samples. An application to a real survey on opinions towards immigration is also included.

Date: 2018
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Citations: View citations in EconPapers (2)

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https://doi.org/10.1111/insr.12218

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