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GSOS: Gauss-Seidel Operator Splitting Algorithm for Multi-Term Nonsmooth Convex Composite Optimization

机译:GSOS:高斯 - Seidel操作员分配算法,用于多术术凸综合理优化

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In this paper, we propose a fast Gauss-Seidel Operator Splitting (GSOS) algorithm for addressing multi-term nonsmooth convex composite optimization, which has wide applications in machine learning, signal processing and statistics. The proposed GSOS algorithm inherits the advantage of the Gauss-Seidel technique to accelerate the optimization procedure, and leverages the operator splitting technique to reduce the computational complexity. In addition, we develop a new technique to establish the global convergence of the GSOS algorithm. To be specific, we first reformulate the iterations of GSOS as a two-step iterations algorithm by employing the tool of operator optimization theory. Subsequently, we establish the convergence of GSOS based on the two-step iterations algorithm reformulation. At last, we apply the proposed GSOS algorithm to solve overlapping group Lasso and graph-guided fused Lasso problems. Numerical experiments show that our proposed GSOS algorithm is superior to the state-of-the-art algorithms in terms of both efficiency and effectiveness.
机译:在本文中,我们提出了一种快速高斯 - Seidel操作员分离(GSOS)算法,用于寻址多术语非光滑凸复合优化,其在机器学习中具有广泛的应用,信号处理和统计。所提出的GSOS算法继承了Gauss-Seidel技术的优点,以加速优化过程,并利用操作员分割技术来降低计算复杂性。此外,我们还开发了一种建立GSOS算法的全局融合的新技术。具体而言,我们首先通过采用操作员优化理论的工具来重新格式化GSOS作为两步迭代算法的迭代。随后,我们基于两步迭代算法重构来建立GSO的收敛性。最后,我们应用提议的GSOS算法来解决重叠组套索和图形引导融合套索问题。数值实验表明,我们所提出的GSOS算法在效率和有效性方面优于最先进的算法。

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