Multi-view clustering is an important and fundamental problem. Many multi-view subspace clustering methods have been proposed, and most of them assume that all views share a same coefficient matrix. However, the underlying information of multi-view data are not fully exploited under this assumption, since the coefficient matrices of different views should have the same clustering properties rather than be uniform among multiple views. To this end, this paper proposes a novel Constrained Bilinear Factorization Multi-view Subspace Clustering (CBF-MSC) method. Specifically, the bilinear factorization with an orthonormality constraint and a low-rank constraint is imposed for all coefficient matrices to make them have the same trace-norm instead of being equivalent, so as to explore the consensus information of multi-view data more fully. Finally, an Augmented Lagrangian Multiplier (ALM) based algorithm is designed to optimize the objective function. Comprehensive experiments tested on nine benchmark datasets validate the effectiveness and competitiveness of the proposed approach compared with several state-of-the-arts.
翻译:多观点组合是一个重要和根本性的问题。 许多多观点子空间分组方法已经提出,其中多数假设所有观点都有一个相同的系数矩阵。但是,多观点数据的基本信息没有在这一假设下得到充分利用,因为不同观点的系数矩阵应该具有相同的组合属性,而不是在多个观点之间保持统一。为此,本文件建议采用一种新的经过整合的双线双线集成多视角分组方法。具体地说,对所有系数矩阵都施加双线因子集成,带有异常性制约和低级别制约,使其具有相同的跟踪-规范,而不是同等,以便更充分地探索多观点数据的协商一致信息。最后,基于Augment Lagrangian Multipler(ALM)算法的目的是优化客观功能。在九个基准数据集上测试过的全面实验证实了拟议方法与若干状态的参数相比的有效性和竞争力。