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Choice of the ridge factor from the correlation matrix determinant

机译:从相关矩阵行列式中选择岭因子

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摘要

Ridge regression is the alternative method to ordinary least squares, which is mostly applied when a multiple linear regression model presents a worrying degree of collinearity. A relevant topic in ridge regression is the selection of the ridge parameter, and different proposals have been presented in the scientific literature. Since the ridge estimator is biased, its estimation is normally based on the calculation of the mean square error (MSE) without considering (to the best of our knowledge) whether the proposed value for the ridge parameter really mitigates the collinearity. With this goal and different simulations, this paper proposes to estimate the ridge parameter from the determinant of the matrix of correlation of the data, which verifies that the variance inflation factor (VIF) is lower than the traditionally established threshold. The possible relation between the VIF and the determinant of the matrix of correlation is also analysed. Finally, the contribution is illustrated with three real examples.
机译:岭回归是普通最小二乘法的替代方法,通常在多元线性回归模型显示出令人担忧的共线性度时使用。脊回归的一个相关主题是脊参数的选择,科学文献中提出了不同的建议。由于脊估计器是有偏差的,因此其估计通常基于均方误差(MSE)的计算,而无需(据我们所知)不考虑脊参数的建议值是否真正减轻了共线性。鉴于此目标和不同的仿真,本文建议从数据相关矩阵的行列式估计岭参数,从而验证方差膨胀因子(VIF)低于传统确定的阈值。还分析了VIF和相关矩阵的行列式之间的可能关系。最后,用三个真实的例子说明了这一贡献。

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