Generalized regression estimation under misspecified sample design

Articles and reports: 12-001-X202500200008
Description: Classical design-based survey estimation relies on a properly specified sampling design for valid inference. We consider the properties of regression estimation under a misspecified sample design, in which the nominal and true inclusion probabilities do not necessarily match. This general misspecified sample design setting encompasses many challenges in the modern survey environment. Under this setting, an asymptotic analysis of the regression estimator, an expression of the bias, and an expression of the variance are presented. Further, a consistent variance estimator is derived and an expression which estimates the bias in-part or in-whole is discussed. This later expression may be used as an indicator of the presence of bias due to misspecification by a practitioner. A simulation study is conducted to support the presented theory.
Issue Number: 2025002
Author(s): Engmark, Joseph D.; Opsomer, Jean D.
Main Product: Survey Methodology
Format Release date More information
HTML December 23, 2025
PDF December 23, 2025

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