论文标题

使用PPDNA自适应筛分:生成独家套索模型的解决方案路径

Adaptive Sieving with PPDNA: Generating Solution Paths of Exclusive Lasso Models

论文作者

Lin, Meixia, Yuan, Yancheng, Sun, Defeng, Toh, Kim-Chuan

论文摘要

由于其在结构性稀疏方面的出色表现,独家拉索(也称为Elitist Lasso)的独家套索(也称为Elitist Lasso)变得很流行。它的复杂性质在计算涉及这种正规化器的高维机学习模型的计算方面构成了困难。在本文中,我们提出了一种自适应筛分(AS)策略,用于使用独家套索正规器生成机器学习模型的解决方案路径,其中一系列减少的问题需要解决较小尺寸的序列。为了解决这些减少的问题,我们提出了一种高效的基于牛顿方法的高效近端算法(PPDNA)。作为重要成分,我们系统地研究了加权套索正规器和相应的广义雅各布式的近端映射。这些结果还使流行的一阶算法用于求解独特的套索模型。针对独家套索模型的各种数值实验已经证明了AS策略生成解决方案路径的有效性和PPDNA的出色性能。

The exclusive lasso (also known as elitist lasso) regularization has become popular recently due to its superior performance on structured sparsity. Its complex nature poses difficulties for the computation of high-dimensional machine learning models involving such a regularizer. In this paper, we propose an adaptive sieving (AS) strategy for generating solution paths of machine learning models with the exclusive lasso regularizer, wherein a sequence of reduced problems with much smaller sizes need to be solved. In order to solve these reduced problems, we propose a highly efficient dual Newton method based proximal point algorithm (PPDNA). As important ingredients, we systematically study the proximal mapping of the weighted exclusive lasso regularizer and the corresponding generalized Jacobian. These results also make popular first-order algorithms for solving exclusive lasso models practical. Various numerical experiments for the exclusive lasso models have demonstrated the effectiveness of the AS strategy for generating solution paths and the superior performance of the PPDNA.

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