Shandong Normal University, Business School, Jinan, 250385, China.
Sci Rep. 2022 Nov 3;12(1):18616. doi: 10.1038/s41598-022-20358-6.
Multi-view spectral clustering is one of the multi-view clustering methods widely studied by numerous scholars. The first step of multi-view spectral clustering is to construct the similarity matrix of each view. Consequently, the clustering performance will be greatly affected by the quality of the similarity matrix of each view. To solve this problem well, an improved multi-view spectral clustering based on tissue-like P systems is proposed in this paper. The optimal per-view similarity matrix is generated in an iterative manner. In addition, spectral clustering is combined with the symmetric nonnegative matrix factorization method to directly output the clustering results to avoid the secondary operation, such as k-means or spectral rotation. Furthermore, improved multi-view spectral clustering is integrated with the tissue-like P system to enhance the computational efficiency of the multi-view clustering algorithm. Extensive experiments verify the effectiveness of this algorithm over other state-of-the-art algorithms.
多视图谱聚类是众多学者广泛研究的多视图聚类方法之一。多视图谱聚类的第一步是构建每视图的相似性矩阵。因此,每视图相似性矩阵的质量将极大地影响聚类性能。为了解决这个问题,本文提出了一种基于类组织 P 系统的改进的多视图谱聚类方法。通过迭代生成最优的单视图相似性矩阵。此外,谱聚类与对称非负矩阵分解方法相结合,可以直接输出聚类结果,避免了 k-means 或谱旋转等二次操作。此外,改进的多视图谱聚类与类组织 P 系统相结合,提高了多视图聚类算法的计算效率。大量实验验证了该算法优于其他最先进的算法。