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THE Mnet METHOD FOR VARIABLE SELECTION

机译:变量选择的Mnet方法

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We propose a penalized approach for variable selection using a combination of minimax concave and ridge penalties. The method is designed to deal with p >= n problems with highly correlated predictors. We call this the Mnet method. Similar to the elastic net of Zou and Hastie (2005), the Mnet tends to select or drop highly correlated predictors together. However, unlike the elastic net, the Mnet is selection consistent and equal to the oracle ridge estimator with high probability under reasonable conditions. We develop an efficient coordinate descent algorithm to compute the Mnet estimates. Simulation studies show that the Mnet has better performance in the presence of highly correlated predictors than either the elastic net or MCP. We illustrate the application of the Mnet to data from a gene expression study in ophthalmology.
机译:我们提出了一种结合最小最大凹和岭惩罚的变量选择的惩罚方法。该方法旨在使用高度相关的预测变量处理p> = n个问题。我们称其为Mnet方法。类似于Zou和Hastie(2005)的弹性网,Mnet倾向于选择或丢弃高度相关的预测变量。但是,与弹性网不同,Mnet在合理条件下具有较高的概率,且选择一致且等于预言岭估计。我们开发了一种有效的坐标下降算法来计算Mnet估计。仿真研究表明,在存在高度相关的预测变量的情况下,Mnet具有比弹性网或MCP更好的性能。我们说明了Mnet在眼科基因表达研究数据中的应用。

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