Robust sampling strategies for regression estimation |
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Authors: | Z. Ouyang H. T. Schreuder H. G. Li |
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Affiliation: | 1. Dept. of Statistics , Colorado State University , Ft. Collins, CO 80526;2. USDA Forest Service, Rocky Mountain Forest and Range Experiment Station, Ft. Collins, CO 80526;3. Bristol-Myers Squibb Company, Syracuse, 4755, NY 13221-4755 |
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Abstract: | For probability linear regression estimation, conditions are derived where sampling will be robust against violations of the commonly assumed heterogeneous variance model. Stratified pps (spps) and stratified random sampling (spscx) are shown to satisfy these conditions approximately and are more efficient generally than restricted simple random sampling (RSRS) for some real populations and for artificial populations with weights of k = 0, 0.5, 1.0, 1.5 and 2.0. The criteria needs some additional refinement to better predict relative efficiency of spps and spscx. |
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Keywords: | linear models regression estimators heterogeneous variance simulations robustness criteria balanced sampling unequal probability sampling stratified sampling |
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