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Optimization of ridge parameters in multivariate generalized ridge regression by plug-in methods

机译:通过插件方法优化多元广义岭回归中的岭参数

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摘要

Generalized ridge (GR) regression for an univariate linear model was proposed simultaneously with ridge regression by Hoerl and Kennard (1970). In this paper, we deal with a GR regression for a multivariate linear model, referred to as a multivariate GR (MGR) regression. From the viewpoint of reducing the mean squared error (MSE) of a predicted value, many authors have proposed several GR estimators consisting of ridge parameters optimized by non-iterative methods. By expanding their optimizations of ridge parameters to the multiple response case, we derive some MGR estimators with ridge parameters optimized by the plug-in method. We analytically compare obtained MGR estimators with existing MGR estimators, and numerical studies are also given for an illustration.
机译:Hoerl和Kennard(1970)同时提出了单变量线性模型的广义岭(GR)回归和岭回归的建议。在本文中,我们处理了多元线性模型的GR回归,称为多元GR(MGR)回归。从减少预测值的均方误差(MSE)的角度出发,许多作者提出了几种GR估计量,这些估计量由通过非迭代方法优化的岭参数组成。通过将脊参数的优化扩展到多重响应的情况,我们得出了一些MGR估计量,这些MGR估计器具有通过插件方法优化的脊参数。我们将获得的MGR估计量与现有的MGR估计量进行分析比较,并给出数值研究作为例证。

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