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CORRECTION FOR COVARIATE MEASUREMENT ERROR IN GENERALIZED LINEAR MODELS - A BOOTSTRAP APPROACH

机译:广义线性模型中共变测量误差的校正-一种自举法

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摘要

A two-phase bootstrap method is proposed for correcting covariate measurement error. Two data sets are needed: validation data for approximating the measurement model and data with a response variable. Bootstrap samples from both the data sets validation data are taken. Parameter estimates of the generalized linear model are calculated using expectations of the measurement model from the validation data as explanatory variables. The method is compared through simulation in logistic regression with the correction method proposed by Rosner, Willet, and Spiegelman (1991, Statistics in Medicine 8, 1051-1069). A real data example is also presented. [References: 14]
机译:提出了一种修正自变量测量误差的两阶段自举方法。需要两个数据集:用于近似测量模型的验证数据和带有响应变量的数据。从两个数据集验证数据中获取引导样本。使用来自验证数据的测量模型的期望值作为解释变量来计算广义线性模型的参数估计。通过Logistic回归中的模拟与Rosner,Willet和Spiegelman(1991,Statistics in Medicine 8,1051-1069)提出的校正方法对方法进行比较。还提供了一个真实的数据示例。 [参考:14]

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