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Joint correntropy metric weighting and block diagonal regularizer for robust multiple kernel subspace clustering

机译:用于强大的多核子空间群集的联合控制度量加权和块对角线规范器

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摘要

Nonlinear kernel-based subspace clustering methods that can reveal the multi-cluster nonlinear structure of samples are an emerging research topic. However, the existing kernel subspace clustering methods have the following three flaws: 1) their clustering performance is largely determined by the chosen kernel function; 2) they may lack robustness in the presence of non-Gaussian noise and impulsive noise; and 3) their learned affinity matrix can not hold the desired block diagonal property for clustering purpose, which possibly leads to incorrect clustering when using spectral clustering. In this paper, we propose a Joint Robust Multiple Kernel Subspace Clustering (JMKSC) method for data clustering, which has two primary innovations. First, our multiple kernel weighting strategy introduces the correntropy metric weighting instead of a fixed, or inappropriately assigned weighting, which is more robust to the non-Gaussian noise and contributes to learning the optimal consensus kernel. Second, our method encourages acquiring an affinity matrix with the optimal block diagonal property based on the block diagonal regularizer (BDR) and the self-expressiveness property. Experiments on several different types of datasets confirm that the proposed JMKSC significantly outperforms several state-of-the-art single kernel and multiple kernel subspace clustering methods in terms of accuracy, NMI and purity. (C) 2019 Elsevier Inc. All rights reserved.
机译:基于非线性内核的子空间聚类方法,可以揭示样本的多集群非线性结构是一个新兴的研究主题。但是,现有的内核子空间聚类方法具有以下三个缺陷:1)它们的聚类性能主要由所选择的内核功能决定; 2)它们可能在非高斯噪声和冲动噪声存在下缺乏鲁棒性; 3)他们学习的关联矩阵不能保持群集目的所需的块对角线属性,这可能导致使用光谱聚类时的群集不正确。在本文中,我们提出了一种用于数据群集的联合强大的多核子空间聚类(JMKSC)方法,其具有两个主要创新。首先,我们的多个内核加权策略介绍了对固定度量加权而不是固定或不恰当地分配的加权,这对非高斯噪声更加强大,并有助于学习最佳共识内核。其次,我们的方法促进基于块对角线规范器(BDR)和自表现属性的最佳块对角线属性获取亲和矩阵。在几种不同类型的数据集上的实验证实,所提出的JMKSC在准确性,NMI和纯度方面显着优于多种最先进的单个内核和多个内核子空间聚类方法。 (c)2019 Elsevier Inc.保留所有权利。

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