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The Extensively Corrected Score for Measurement Error Models

机译:测量误差模型的广泛校正分数

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摘要

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.
机译:在测量误差问题中,两个主要且一致的估计方法是条件得分和校正得分。它们是功能函数方法,不需要对度量错误的协变量进行参数假设。条件得分要求可以找到针对误测协变量的合适的足够统计量,而校正得分要求可以在没有偏差的情况下估计对象得分函数。这些假设限制了它们的应用范围。这里提出的广泛校正分数是校正分数的扩展。当条件分数和校正分数都不可行时,它会在许多情况下产生一致的估计。我们在广义线性模型和Cox比例风险模型中演示了其构造,并通过仿真研究评估了其性能,并通过两个实际示例说明了其实现。

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