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超越低秩表示:基于优化图结构的正交聚类基重建的多视图谱聚类。

Beyond Low-Rank Representations: Orthogonal clustering basis reconstruction with optimized graph structure for multi-view spectral clustering.

机构信息

Dalian University of Technology, Dalian 116024, China; The University of New South Wales, NSW 2052, Australia.

The University of Queensland, Queensland 4072, Australia.

出版信息

Neural Netw. 2018 Jul;103:1-8. doi: 10.1016/j.neunet.2018.03.006. Epub 2018 Mar 20.

Abstract

Low-Rank Representation (LRR) is arguably one of the most powerful paradigms for Multi-view spectral clustering, which elegantly encodes the multi-view local graph/manifold structures into an intrinsic low-rank self-expressive data similarity embedded in high-dimensional space, to yield a better graph partition than their single-view counterparts. In this paper we revisit it with a fundamentally different perspective by discovering LRR as essentially a latent clustered orthogonal projection based representation winged with an optimized local graph structure for spectral clustering; each column of the representation is fundamentally a cluster basis orthogonal to others to indicate its members, which intuitively projects the view-specific feature representation to be the one spanned by all orthogonal basis to characterize the cluster structures. Upon this finding, we propose our technique with the following: (1) We decompose LRR into latent clustered orthogonal representation via low-rank matrix factorization, to encode the more flexible cluster structures than LRR over primal data objects; (2) We convert the problem of LRR into that of simultaneously learning orthogonal clustered representation and optimized local graph structure for each view; (3) The learned orthogonal clustered representations and local graph structures enjoy the same magnitude for multi-view, so that the ideal multi-view consensus can be readily achieved. The experiments over multi-view datasets validate its superiority, especially over recent state-of-the-art LRR models.

摘要

低秩表示 (LRR) 可以说是多视角谱聚类中最强大的范例之一,它巧妙地将多视角局部图/流形结构编码为内在的低秩自表达数据相似性,嵌入高维空间中,以产生比单视图更好的图划分。在本文中,我们通过发现 LRR 本质上是一种基于潜在聚类正交投影的表示形式,并带有优化的局部图结构,从而从根本上不同的角度重新审视它,用于谱聚类;表示的每一列本质上都是彼此正交的聚类基,以指示其成员,这直观地将特定于视图的特征表示投影为由所有正交基张成的表示,以刻画聚类结构。基于这一发现,我们提出了以下技术:(1) 通过低秩矩阵分解将 LRR 分解为潜在聚类正交表示,以在原始数据对象上编码更灵活的聚类结构;(2) 将 LRR 的问题转化为同时学习每个视图的正交聚类表示和优化的局部图结构;(3) 学习到的正交聚类表示和局部图结构具有相同的多视图幅度,因此可以轻松实现理想的多视图一致性。在多视图数据集上的实验验证了其优越性,尤其是在最近的 LRR 模型方面。

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