A unified approach to regression analysis under double-sampling designs |
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Authors: | Yi-Hau Chen,& Hung Chen |
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Affiliation: | National Taiwan Normal University, Taiwan,;National Taiwan University, Taiwan |
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Abstract: | We propose a unified approach to the estimation of regression parameters under double-sampling designs, in which a primary sample consisting of data on the rough or proxy measures for the response and/or explanatory variables as well as a validation subsample consisting of data on the exact measurements are available. We assume that the validation sample is a simple random subsample from the primary sample. Our proposal utilizes a specific parametric model to extract the partial information contained in the primary sample. The resulting estimator is consistent even if such a model is misspecified, and it achieves higher asymptotic efficiency than the estimator based only on the validation data. Specific cases are discussed to illustrate the application of the estimator proposed. |
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Keywords: | Double sampling Estimating equation Generalized linear model Incomplete data Validation sample |
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