Jing LiuFuyuan CaoXiao‐Zhi GaoLiqin YuJiye Liang
Clustering by jointly exploiting information from multiple views can yield better performance than clustering on one single view. Some existing multi-view clustering methods aim at learning a weight for each view to determine its contribution to the final solution. However, the view-weighted scheme can only indicate the overall importance of a view, which fails to recognize the importance of each inner cluster of a view. A view with higher weight cannot guarantee all clusters in this view have higher importance than them in other views. In this paper, we propose a cluster-weighted kernel k-means method for multi-view clustering. Each inner cluster of each view is assigned a weight, which is learned based on the intra-cluster similarity of the cluster compared with all its corresponding clusters in different views, to make the cluster with higher intra-cluster similarity have a higher weight among the corresponding clusters. The cluster labels are learned simultaneously with the cluster weights in an alternative updating way, by minimizing the weighted sum-of-squared errors of the kernel k-means. Compared with the view-weighted scheme, the cluster-weighted scheme enhances the interpretability for the clustering results. Experimental results on both synthetic and real data sets demonstrate the effectiveness of the proposed method.
Hong YuYahong LianShu LiJiaXin Chen
Yongkai YeXinwang LiuJianping YinEn Zhu
Grigorios TzortzisAristidis Likas
Jinglin XuJunwei HanFeiping NieXuelong Li
Guangyu ZhangChang‐Dong WangDong HuangWei‐Shi ZhengYuren Zhou