Luo Minnan, Yan Caixia, Zheng Qinghua, Chang Xiaojun, Chen Ling, Nie Feiping
IEEE Trans Image Process. 2019 Apr 30. doi: 10.1109/TIP.2019.2913081.
Spectral clustering plays a significant role in applications that rely on multi-view data due to its well-defined mathematical framework and excellent performance on arbitrarily-shaped clusters. Unfortunately, directly optimizing the spectral clustering inevitably results in an NP-hard problem due to the discrete constraints on the clustering labels. Hence, conventional approaches intuitively include a relax-and-discretize strategy to approximate the original solution. However, there are no principles in this strategy that prevent the possibility of information loss between each stage of the process. This uncertainty is aggravated when a procedure of heterogeneous features fusion has to be included in multi-view spectral clustering. In this paper, we avoid an NP-hard optimization problem and develop a general framework for multi-view discrete graph clustering by directly learning a consensus partition across multiple views, instead of using the relax-and-discretize strategy. An effective re-weighting optimization algorithm is exploited to solve the proposed challenging problem. Further, we provide a theoretical analysis of the model's convergence properties and computational complexity for the proposed algorithm. Extensive experiments on several benchmark datasets verify the effectiveness and superiority of the proposed algorithm on clustering and image segmentation tasks.
由于其明确的数学框架以及在任意形状聚类上的出色性能,谱聚类在依赖多视图数据的应用中发挥着重要作用。不幸的是,由于聚类标签上的离散约束,直接优化谱聚类不可避免地会导致一个NP难问题。因此,传统方法直观地包括一种松弛和离散化策略来近似原始解。然而,该策略中没有防止过程各阶段之间信息丢失可能性的原则。当多视图谱聚类中必须包含异构特征融合过程时,这种不确定性会加剧。在本文中,我们避免了NP难优化问题,通过直接学习跨多个视图的一致划分,而不是使用松弛和离散化策略,开发了一个用于多视图离散图聚类的通用框架。利用一种有效的重新加权优化算法来解决提出的具有挑战性的问题。此外,我们对所提出算法的模型收敛性质和计算复杂性进行了理论分析。在几个基准数据集上进行的大量实验验证了所提出算法在聚类和图像分割任务上的有效性和优越性。