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Restricted ridge estimator in generalized linear models: Monte Carlo simulation studies on Poisson and binomial distributed responses

机译:广义线性模型中的限制岭估计:泊松和二项分布响应的蒙特卡罗模拟研究

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摘要

It is known that collinearity among the explanatory variables in generalized linear models (GLMs) inflates the variance of maximum likelihood estimators. To overcome multicollinearity in GLMs, ordinary ridge estimator and restricted estimator were proposed. In this study, a restricted ridge estimator is introduced by unifying the ordinary ridge estimator and the restricted estimator in GLMs and its mean squared error (MSE) properties are discussed. The MSE comparisons are done in the context of first-order approximated estimators. The results are illustrated by a numerical example and two simulation studies are conducted with Poisson and binomial responses.
机译:众所周知,广义线性模型(GLM)中解释变量之间的共线性扩大了最大似然估计量的方差。为了克服GLM中的多重共线性问题,提出了普通岭估计和受限估计。在这项研究中,通过将普通脊线估计器和GLM中的限制估计器统一起来,引入了一种限制脊线估计器,并讨论了其均方误差(MSE)性质。 MSE比较是在一阶近似估计量的背景下完成的。数值示例说明了结果,并利用泊松响应和二项式响应进行了两个仿真研究。

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