论文标题

通过统一和离散的双分图学习有效的多视图聚类

Efficient Multi-view Clustering via Unified and Discrete Bipartite Graph Learning

论文作者

Fang, Si-Guo, Huang, Dong, Cai, Xiao-Sha, Wang, Chang-Dong, He, Chaobo, Tang, Yong

论文摘要

尽管以前基于图的多视图聚类算法已经取得了重大进展,但其中大多数仍面临三个限制。首先,他们经常患有高计算复杂性,这在大规模的情况下限制了其应用。其次,他们通常在单视级或视图传统级别上进行图形学习,但经常忽略单视图和共识图的联合学习的可能性。第三,其中许多依靠K-均值来离散光谱嵌入,这些嵌入缺乏直接使用离散群集结构直接学习图形的能力。鉴于此,本文通过统一和离散的两部分图(UDBGL)提出了一种有效的多视图聚类方法。具体而言,基于锚的子空间学习被合并为从多个视图中学习特定的二分图,并利用双方图融合来学习具有自适应重量学习的视图 - 共音曲线图。此外,施加Laplacian等级约束以确保融合的两分图具有离散的群集结构(具有特定数量的连接组件)。 By simultaneously formulating the view-specific bipartite graph learning, the view-consensus bipartite graph learning, and the discrete cluster structure learning into a unified objective function, an efficient minimization algorithm is then designed to tackle this optimization problem and directly achieve a discrete clustering solution without requiring additional partitioning, which notably has linear time complexity in data size.各种多视图数据集的实验证明了我们的UDBGL方法的鲁棒性和效率。该代码可在https://github.com/huangdonghere/udbgl上找到。

Although previous graph-based multi-view clustering algorithms have gained significant progress, most of them are still faced with three limitations. First, they often suffer from high computational complexity, which restricts their applications in large-scale scenarios. Second, they usually perform graph learning either at the single-view level or at the view-consensus level, but often neglect the possibility of the joint learning of single-view and consensus graphs. Third, many of them rely on the k-means for discretization of the spectral embeddings, which lack the ability to directly learn the graph with discrete cluster structure. In light of this, this paper presents an efficient multi-view clustering approach via unified and discrete bipartite graph learning (UDBGL). Specifically, the anchor-based subspace learning is incorporated to learn the view-specific bipartite graphs from multiple views, upon which the bipartite graph fusion is leveraged to learn a view-consensus bipartite graph with adaptive weight learning. Further, the Laplacian rank constraint is imposed to ensure that the fused bipartite graph has discrete cluster structures (with a specific number of connected components). By simultaneously formulating the view-specific bipartite graph learning, the view-consensus bipartite graph learning, and the discrete cluster structure learning into a unified objective function, an efficient minimization algorithm is then designed to tackle this optimization problem and directly achieve a discrete clustering solution without requiring additional partitioning, which notably has linear time complexity in data size. Experiments on a variety of multi-view datasets demonstrate the robustness and efficiency of our UDBGL approach. The code is available at https://github.com/huangdonghere/UDBGL.

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