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首页> 外文期刊>Communications in Statistics >Grouping Variable Selection by Weight Fused Elastic Net for Multi-Collinear Data
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Grouping Variable Selection by Weight Fused Elastic Net for Multi-Collinear Data

机译:基于加权融合弹性网的多直线数据分组变量选择

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摘要

In this article, we consider the problem of variable selection and estimation with the strongly correlated multi-collinear data by using grouping variable selection techniques. A new grouping variable selection method, called weight-fused elastic net(WFEN), is proposed to deal with the high dimensional collinear data. The proposed model, combined two different grouping effect mechanisms induced by the elastic net and weight-fused LASSO, respectively, can be easily unified in the frame of LASSO and computed efficiently. The performance with the simulation and real data sets shows that our method is competitive with other related methods, especially when the data present high multi-collinearity.
机译:在本文中,我们通过使用分组变量选择技术来考虑与高度相关的多共线性数据进行变量选择和估计的问题。提出了一种新的分组变量选择方法,称为加权融合弹性网(WFEN),用于处理高维共线数据。所提出的模型,分别结合了由弹性网和重量融合的LASSO引起的两种不同的分组效应机制,可以很容易地在LASSO框架内统一并有效地进行计算。仿真和真实数据集的性能表明,我们的方法与其他相关方法相比具有竞争优势,尤其是当数据呈现高多重共线性时。

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