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A robust regularization path for the Doubly Regularized Support Vector Machine

机译:双程正则化支持向量机的强大正则化路径

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The Doubly Regularized SVM (DrSVM) is an extension of SVM using a mixture of L_2 and L_1 norm penalties. This kind of penalty, sometimes referred as the elastic net, allows to perform variable selection while taking into account correlations between variables. Introduced by Wang, an efficient algorithm to compute the whole DrSVM solution path has been proposed. Unfortunately, in some cases, this path is discontinuous, and thus not piecewise linear. To solve this problem, we propose here a new sub gradient formulation of the DrSVM problem. This led us to propose an alternative L_1 regularization path algorithm. This reformulation efficiently addresses the aforementioned problem and makes the initialization step more generic. The results show the validity of our sub-gradient formulation and the efficiency compared to the initial formulation.
机译:双程正则化SVM(DRSVM)是使用L_2和L_1 NOM规范的混合物的SVM的延伸。这种惩罚有时称为弹性网,允许在考虑变量之间的相关性的同时执行变量选择。由Wang引入,提出了一种计算整个DRSVM解决方案路径的有效算法。不幸的是,在某些情况下,该路径是不连续的,因此不是分段线性的。为了解决这个问题,我们在这里提出了DRSVM问题的新子渐变配方。这使我们提出了替代的L_1正则化路径算法。这种重构有效地解决了上述问题,并使初始化步骤更通用。结果表明,与初始配方相比,我们的子梯度配方的有效性和效率。

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