Variance Estimation of Imputed Estimators of Change for Repeated Rotating Surveys |
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Authors: | Yves G. Berger Emilio L. Escobar |
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Affiliation: | 1. University of Southampton, Southampton, UK;2. Numerika, Mexico City, Mexico |
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Abstract: | A common problem in survey sampling is to compare two cross‐sectional estimates for the same study variable taken from two different waves or occasions. These cross‐sectional estimates often include imputed values to compensate for item non‐response. The estimation of the sampling variance of the estimator of change is useful to judge whether the observed change is statistically significant. Estimating the variance of a change is not straightforward because of the rotation in repeated surveys and imputation. We propose using a multivariate linear regression approach and show how it can be used to accommodate the effect of rotation and imputation. The regression approach gives a design‐consistent estimation of the variance of change when the sampling fraction is small. We illustrate the proposed approach using random hot‐deck imputation, although the proposed estimator can be implemented with other imputation techniques. |
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Keywords: | Longitudinal surveys missing data non‐response overlapping samples rotation unequal inclusion probabilities |
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