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A new algorithm to estimate monotone nonparametric link functions and a comparison with parametric approach

机译:一种估计单调非参数链接函数的新算法以及与参数方法的比较

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摘要

The generalized linear model (GLM) is a class of regression models where the means of the response variables and the linear predictors are joined through a link function. Standard GLM assumes the link function is fixed, and one can form more flexible GLM by either estimating the flexible link function from a parametric family of link functions or estimating it nonparametically. In this paper, we propose a new algorithm that uses P-spline for nonparametrically estimating the link function which is guaranteed to be monotone. It is equivalent to fit the generalized single index model with monotonicity constraint. We also conduct extensive simulation studies to compare our nonparametric approach for estimating link function with various parametric approaches, including traditional logit, probit and robit link functions, and two recently developed link functions, the generalized extreme value link and the symmetric power logit link. The simulation study shows that the link function estimated nonparametrically by our proposed algorithm performs well under a wide range of different true link functions and outperforms parametric approaches when they are misspecified. A real data example is used to illustrate the results.
机译:广义线性模型(GLM)是一类回归模型,其中响应变量的平均值和线性预测变量通过链接函数连接在一起。标准GLM假定链接函数是固定的,并且可以通过从链接函数的参数族中估计灵活的链接函数或以非参数方式估计它来形成更灵活的GLM。在本文中,我们提出了一种新的算法,该算法使用P样条来非参数地估计保证单调的链接函数。等效于用单调性约束拟合广义单指标模型。我们还进行了广泛的仿真研究,以比较用于估计链接函数的非参数方法与各种参数方法,包括传统的logit,probit和robit链接函数,以及两个最近开发的链接函数,即广义极值链接和对称幂logit链接。仿真研究表明,我们提出的算法非参数估计的链接函数在各种不同的真实链接函数下表现良好,并且在错误指定参数时优于参数方法。实际数据示例用于说明结果。

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