State Key Laboratory of Integrated Services Networks, Xidian University, Shaanxi, 710071, China.
State Key Laboratory of Integrated Services Networks, Xidian University, Shaanxi, 710071, China; the Unmanned System Research Institute, Northwestern Polytechnical University, Shaanxi, 710069, China.
Neural Netw. 2020 Dec;132:245-252. doi: 10.1016/j.neunet.2020.08.019. Epub 2020 Sep 5.
Due to the efficiency of exploiting relationships and complex structures hidden in multi-views data, graph-oriented clustering methods have achieved remarkable progress in recent years. But most existing graph-based spectral methods still have the following demerits: (1) They regularize each view equally, which does not make sense in real applications. (2) By employing different norms, most existing methods calculate the error feature by feature, resulting in neglecting the spatial structure information and the complementary information. To tackle the aforementioned drawbacks, we propose an enhanced multi-view spectral clustering model. Our model characterizes the consistency among indicator matrices by minimizing our proposed weighted tensor nuclear norm, which explicitly exploits the salient different information between singular values of the matrix. Moreover, our model adaptively assigns a reasonable weight to each view, which helps improve robustness of the algorithm. Finally, the proposed tensor nuclear norm well exploits both high-order and complementary information, which helps mine the consistency between indicator matrices. Extensive experiments indicate the efficiency of our method.
由于在多视图数据中利用关系和复杂结构的效率,基于图的聚类方法近年来取得了显著的进展。但是,大多数现有的基于图的谱方法仍然存在以下缺点:(1)它们平等地正则化每个视图,这在实际应用中没有意义。(2)通过使用不同的范数,大多数现有的方法按特征计算误差,从而忽略了空间结构信息和互补信息。为了解决上述缺点,我们提出了一种增强型多视图谱聚类模型。我们的模型通过最小化我们提出的加权张量核范数来刻画指标矩阵之间的一致性,该范数显式地利用了矩阵奇异值之间显著的不同信息。此外,我们的模型自适应地为每个视图分配一个合理的权重,这有助于提高算法的鲁棒性。最后,所提出的张量核范数很好地利用了高阶和互补信息,有助于挖掘指标矩阵之间的一致性。大量实验表明了我们方法的有效性。