Design‐Based Inference in a Mixture Model for Ordinal Variables for a Two Stage Stratified Design |
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Authors: | R. Gambacorta M. Iannario R. Valliant |
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Affiliation: | 1. Statistics Directorate, Bank of Italy, , 91, 00184 Rome, Italy;2. Department of Political Science, University of Naples Federico II, , 80132 Napoli, Italy;3. Joint Program in Survey Methodology, University of Maryland, , College Park, MD, 20742 USA |
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Abstract: | In this paper we present methods for inference on data selected by a complex sampling design for a class of statistical models for the analysis of ordinal variables. Specifically, assuming that the sampling scheme is not ignorable, we derive for the class of cub models (Combination of discrete Uniform and shifted Binomial distributions) variance estimates for a complex two stage stratified sample. Both Taylor linearization and repeated replication variance estimators are presented. We also provide design‐based test diagnostics and goodness‐of‐fit measures. We illustrate by means of real data analysis the differences between survey‐weighted and unweighted point estimates and inferences for cub model parameters. |
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Keywords: | cub models complex sampling design repeated replication methods sampling variance Taylor series linearization |
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