快速算法求解Dantzig选择器

Liang Li, Yongcheng Li, Qing Ling
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引用次数: 2

摘要

Dantzig选择器是一种线性回归模型,旨在通过回归量稀疏地表示响应向量。本文介绍了求解Dantzig选择器的两种快速算法。一种算法是线性化交替方向法(LADMM),利用可分结构求解Dantzig选择器;另一种是Dantzig选择器的序列优化(DASSO)变体,它利用稀疏性先验来求解Dantzig选择器。我们在标准数据集上对这两种算法进行了数值比较,并表明利用问题本身的特性可以设计出快速的算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fast algorithms to solve the Dantzig selector
The Dantzig selector is a linear regression model which aims to sparsely represent a response vector by regressors. This paper introduces two fast algorithms which solve the Dantzig selector. One algorithm is linearized alternating direction method (LADMM) which utilizes the separable structure to solve the Dantzig selector; another is a variant of Dantzig selector with sequential optimization (DASSO) which utilizes the sparsity prior to solve the Dantzig selector. We numerically compare the two algorithms on standard data sets, and show that taking advantage of properties of the problem itself enables designing fast algorithms.
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