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Graphical group ridge

机译:图形小组山脊

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This article introduces a novel method, called Graphical Group Ridge (GG-Ridge), which classifies ridge regression predictors in disjoint groups of conditionally correlated variables and derives different penalties (shrinkage parameters) for these groups of predictors. It combines the ridge regression method with the graphical model for high-dimensional data (i.e. the number of predictors,p, exceeds the number of cases,n) or ill-conditioned data (e.g. in the presence of multicollinearity among predictors). Although ridge regression is very effective with these types of data, its main shortcoming is that it applies the same penalty to all predictors, which can consequently limit the reduction in both the mean square error and the prediction mean square error, and over-shrink some predictors. This issue is addressed by the new method which reduces the mean square errors by assigning different penalties to different groups of predictors. Moreover, it reduces the extent of over-shrinking of predictors as compared to the ridge method, which is a desirable property in many fields such as finance, genetics and climate. The performance of the GG-Ridge method is investigated through two simulation studies and a real data analysis, and the results are compared with those of Ridge regression, and Elastic Net. The results indicate that the GG-Ridge outperforms these two methods in reducing the mean square errors, the prediction mean square error, and the bias of coefficients estimates.
机译:本文介绍了一种名为图形组脊(GG-RIDGE)的新方法,该方法对条件相关变量的脱编组中的脊回归预测器分类,并导出这些预测器组的不同惩罚(收缩参数)。它将RIDGE回归方法与高维数据的图形模型相结合(即预测器的数量,P,超过案例数,N)或不成条件数据(例如,在预测器之间存在多元图)。虽然Ridge回归对这些类型的数据非常有效,但其主要缺点是它对所有预测器应用相同的惩罚,这可能会限制平均方误差和预测均方误差的减少,以及过度缩小一些预测器。该问题由新方法解决,通过为不同的预测器组分配不同的惩罚来缩短均方误差。此外,与脊法相比,它降低了预测器的过度收缩程度,这是许多领域中的理想性质,例如金融,遗传学和气候。通过两个模拟研究和实际数据分析研究了GG-RIDGE方法的性能,并将结果与​​脊回归和弹性网进行了比较。结果表明,GG-RIDGE在降低均方误差,预测均方误差和系数估计的偏差方面以此两种方法占此两种方法。

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