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Cauchy loss induced block diagonal representation for robust multi-view subspace clustering

机译:Cauchy丢失诱导块对角线表示,用于鲁棒多视图子空间聚类

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摘要

With the rapid emergence of data that can be described by different feature sets or different "views", multi-view subspace clustering has attracted considerable research attention. To uncover the common latent structure shared by multiple views, existing models usually impose the sparse or/and low-rank constraint on the coefficients of each view data, and use Frobenius norm or '1-norm based metric to measure the residuals of multi-view data. However, the intuition behind the sparse or low-rank regularization is implicit. Besides, the Frobenius norm or '1-norm based metric is suitable to handle either Gaussian noise or sparse noise, which are very sensitive to larger noise or outliers. When the data is contaminated by large noise or densely corrupted, performance of existing models is degraded dramatically. In this article, we propose a novel multi-view subspace clustering method to provide superior robustness against large noise or outliers embedded in multi-view data. Our method adopts a more direct and intuitive block diagonal regularization to preserve the underlying structure of each view, and meantime introduces the cauchy loss function to deal with large noise. The derived consensus representation matrix can effectively preserve the underlying common structure of multi-view data and be robust to large noise and data corruptions. Experimental results show that our method outperforms the state-of-the-arts on both synthetic and real-world benchmark datasets. (c) 2020 Elsevier B.V. All rights reserved.
机译:随着可以通过不同特征集或不同“视图”的数据的快速出现,多视图子空间聚类引起了相当大的研究。要揭示多个视图共享的共同潜在结构,现有模型通常会对每个视图数据的系数施加稀疏或/和低秩约束,并使用Frobenius规范或基于1常态的度量来测量多个 - 查看数据。但是,稀疏或低级正则化背后的直觉是隐式的。此外,Frobenius规范或基于1规范的度量适用于处理高斯噪声或稀疏噪声,这对较大的噪声或异常值非常敏感。当数据受到大噪声或密集损坏的污染时,现有模型的性能急剧下降。在本文中,我们提出了一种新颖的多视图子空间聚类方法,可以针对嵌入在多视图数据中的大型噪声或异常值提供卓越的鲁棒性。我们的方法采用更直接而直观的对角线正则化,以保持每个视图的底层结构,同时介绍Cauchy损耗功能以处理大噪声。衍生的共识表示矩阵可以有效地保留多视图数据的基础共同结构,并且对大型噪声和数据损坏具有鲁棒性。实验结果表明,我们的方法优于合成和现实世界基准数据集的最先进。 (c)2020 Elsevier B.v.保留所有权利。

著录项

  • 来源
    《Neurocomputing 》 |2021年第28期| 84-95| 共12页
  • 作者单位

    Guangdong Univ Technol Sch Automat Guangzhou 510006 Peoples R China;

    Guangdong Univ Technol Sch Automat Guangzhou 510006 Peoples R China;

    Sci & Technol Electroopt Control Lab Luoyang 471009 Peoples R China;

    Xiamen Univ Sch Informat Xiamen 361005 Peoples R China;

    Xiamen Univ Sch Informat Xiamen 361005 Peoples R China;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Subspace clustering; Multi-view learning; Block diagonal; Robustness;

    机译:子空间聚类;多视图学习;块对角线;鲁棒性;
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