JOURNAL ARTICLE

The Extensively Corrected Score for Measurement Error Models

Yih‐Huei HuangChi‐Chung WenYu-Rong Hsu

Year: 2015 Journal:   Scandinavian Journal of Statistics Vol: 42 (4)Pages: 911-924   Publisher: Wiley

Abstract

Abstract In measurement error problems, two major and consistent estimation methods are the conditional score and the corrected score. They are functional methods that require no parametric assumptions on mismeasured covariates. The conditional score requires that a suitable sufficient statistic for the mismeasured covariate can be found, while the corrected score requires that the object score function can be estimated without bias. These assumptions limit their ranges of applications. The extensively corrected score proposed here is an extension of the corrected score. It yields consistent estimations in many cases when neither the conditional score nor the corrected score is feasible. We demonstrate its constructions in generalized linear models and the Cox proportional hazards model, assess its performances by simulation studies and illustrate its implementations by two real examples.

Keywords:
Score Covariate Mathematics Statistics Statistic Parametric statistics Conditional expectation Observational error Econometrics

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