Proximal Riemannian Pursuit for Large-Scale Trace-Norm Minimization

Mingkui Tan, Shijie Xiao, Junbin Gao, Dong Xu, A. Hengel, Javen Qinfeng Shi
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引用次数: 5

Abstract

Trace-norm regularization plays an important role in many areas such as computer vision and machine learning. When solving general large-scale trace-norm regularized problems, existing methods may be computationally expensive due to many high-dimensional truncated singular value decompositions (SVDs) or the unawareness of matrix ranks. In this paper, we propose a proximal Riemannian pursuit (PRP) paradigm which addresses a sequence of trace-norm regularized subproblems defined on nonlinear matrix varieties. To address the subproblem, we extend the proximal gradient method on vector space to nonlinear matrix varieties, in which the SVDs of intermediate solutions are maintained by cheap low-rank QR decompositions, therefore making the proposed method more scalable. Empirical studies on several tasks, such as matrix completion and low-rank representation based subspace clustering, demonstrate the competitive performance of the proposed paradigms over existing methods.
大规模迹范数最小化的近端黎曼追踪
跟踪范数正则化在计算机视觉、机器学习等领域发挥着重要作用。在求解一般的大规模迹范数正则化问题时,现有方法由于存在大量高维截断奇异值分解(svd)或对矩阵秩的不感知,计算量大。在本文中,我们提出了一个近端黎曼追求(PRP)范式,该范式解决了一系列定义在非线性矩阵变体上的迹范数正则化子问题。为了解决子问题,我们将向量空间上的近端梯度方法扩展到非线性矩阵变体,其中中间解的svd通过廉价的低秩QR分解来维持,从而使所提出的方法更具可扩展性。对若干任务的实证研究,如矩阵补全和基于低秩表示的子空间聚类,证明了所提出的范式与现有方法的竞争性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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