School of Telecommunications Engineering, Xidian University, Shaanxi 710071, China.
School of Telecommunications Engineering, Xidian University, Shaanxi 710071, China.
Neural Netw. 2023 Sep;166:137-147. doi: 10.1016/j.neunet.2023.06.038. Epub 2023 Jul 6.
Spectral clustering has attracted intensive attention in multimedia applications due to its good performance on arbitrary shaped clusters and well-defined mathematical framework. However, most existing multi-view spectral clustering methods still have the following demerits: (1) They ignore useful complementary information embedded in indicator matrices of different views. (2) The conventional post-processing methods based on the relax and discrete strategy inevitably result in the sub-optimal discrete solution. To tackle the aforementioned drawbacks, we propose a low-rank discrete multi-view spectral clustering model. Drawing inspiration from the fact that the difference between indicator matrices of different views provides useful complementary information for clustering, our model exploits the complementary information embedded in indicator matrices with tensor Schatten p-norm constraint. Further, we integrate low-rank tensor learning and discrete label recovering into a uniform framework, which avoids the uncertainty of the relaxed and discrete strategy. Extensive experiments on benchmark datasets have demonstrated the effectiveness and superiority of the proposed method.
谱聚类由于其在任意形状聚类上的良好性能和明确的数学框架,在多媒体应用中引起了广泛关注。然而,大多数现有的多视图谱聚类方法仍然存在以下缺点:(1)它们忽略了不同视图的指示矩阵中嵌入的有用补充信息。(2)基于松弛和离散策略的传统后处理方法不可避免地导致次优的离散解。为了解决上述缺点,我们提出了一种低秩离散多视图谱聚类模型。受不同视图的指示矩阵之间的差异为聚类提供有用的补充信息的启发,我们的模型利用张量 Schatten p-范数约束来挖掘指示矩阵中嵌入的互补信息。此外,我们将低秩张量学习和离散标签恢复集成到一个统一的框架中,从而避免了松弛和离散策略的不确定性。在基准数据集上的广泛实验表明了所提出方法的有效性和优越性。