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Matrix Factorization with Column L0-Norm Constraint for Robust Multi-subspace Analysis

机译:矩阵分解,具有稳健多子空间分析的列L0-NOM限制

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We aim to study the subspace structure of data approximately generated from multiple categories and remove errors (e.g., noise, corruptions, and outliers) in the data as well. Most previous methods for subspace analysis learn only one subspace, failing to discover the intrinsic complex structure, while state-of-the-art methods use data itself as the basis (self-expressiveness property), showing degraded performance when data contain errors. To tackle the problem, we propose a novel method, called Matrix Factorization with Column L-norm constraint (MFC), from the matrix factorization perspective. MFC simultaneously discovers the multi-subspace structure of either clean or contaminated data, and learns the basis for each subspace. Specifically, the learnt basis with the orthonormal constraint shows high robustness to errors by adding a regularization term. Owing to the column l-norm constraint, the generated representation matrix can be (approximate) block-diagonal after reordering its columns, with each block characterizing one subspace. We develop an efficient first-order optimization scheme to stably solve the nonconvex and nonsmooth objective function of MFC. Experimental results on synthetic data and real-world face datasets demonstrate the superiority over traditional and state-of-the-art methods on both representation learning, subspace recovery and clustering.
机译:我们的目标是研究大致从多个类别生成的数据的子空间结构,并在数据中删除错误(例如,噪声,损坏和异常值)。最先前的子空间分析方法仅限一个子空间,未能发现内在复杂结构,而最先进的方法使用数据本身作为基础(自表现属性),在数据包含错误时显示出降级的性能。为了解决问题,我们提出了一种新的方法,从矩阵分子分子视角来提出了一种具有列L-NOM限制(MFC)的矩阵分解。 MFC同时发现清洁或受污染数据的多子空间结构,并为每个子空间学习基础。具体地,通过添加正则化术语,具有正交约束的学习基础显示出对错误的高稳健性。由于列L-Norm约束,在重新排序其列之后,所生成的表示矩阵可以是(近似)块对角线,每个块表征一个子空间。我们开发了一个有效的一阶优化方案,以稳定地解决MFC的非凸起和非光滑目标函数。合成数据和现实世界脸部数据集的实验结果证明了对既代表学习,子空间恢复和聚类的传统和最先进方法的优势。

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