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On quadratic logistic regression models when predictor variables are subject to measurement error

机译:在预测变量受测量误差影响的二次逻辑回归模型中

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Owing to its good properties and a simple model fitting procedure, logistic regression is one of the most commonly used methods applied to data consisting of binary outcomes and one or more predictor variables. However, if the predictor variables are measured with error and the functional relationship between the response and predictor variables is nonlinear (e.g., quadratic) then consistent estimation of model parameters is more challenging to develop. To address the effects of measurement error in predictor variables when using quadratic logistic regression models, two novel approaches are developed: (1) an approximated refined regression calibration; and (2) a weighted corrected score method. Both proposed approaches offer several advantages over existing methods in that they are computationally efficient and are straightforward to implement. A simulation study was conducted to evaluate the estimators' finite sample performance. The proposed methods are also applied on real data from a medical study and an ecological application. (c) 2015 Elsevier B.V. All rights reserved.
机译:由于其良好的性能和简单的模型拟合程序,逻辑回归是最常用的方法之一,适用于由二进制结果和一个或多个预测变量组成的数据。但是,如果预测变量的测量有误差,并且响应变量和预测变量之间的函数关系是非线性的(例如,二次函数),则模型参数的一致估计将更难以开发。为了解决使用二次逻辑回归模型时预测变量的测量误差的影响,开发了两种新颖的方法:(1)近似精简回归校准; (2)加权校正得分法。与现有方法相比,这两种提议的方法均具有一些优势,因为它们计算效率高且易于实现。进行了仿真研究,以评估估算器的有限样本性能。所提出的方法还应用于医学研究和生态学应用的真实数据。 (c)2015 Elsevier B.V.保留所有权利。

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