Xiaohui WeiHaibo LiuPuhong DuanShutao Li
Bipartite graph (BiG) has been proven to be efficient in handling massive multiview data for clustering. However, how to regulate the structural information of view-specific anchors and view-shared BiG is still open and needs to be further studied. Hence, a novel dual-structural BiG learning (DsBiGL) method is proposed in the article. It transforms BiG learning into a joint optimization problem of IntrA-view and InteR-view subspace learning (IASL and IRSL) with the structural constraints, such as k-nearest neighbor (KNN) and low-rank. On one hand, IASL uses the KNN and view-specific low-rank constraints to enhance the discriminativeness of view-specific anchors. On the other hand, IRSL uses an adaptive weighting strategy to obtain view-shared BiG directly from multiview samples, where the KNN and view-shared low-rank constraints are adopted to encode local connectivity and cluster information between samples. Note that IASL and IRSL are integrated into a unified optimization model, which ensures the interactive enhancement of view-specific anchor representation and view-shared BiG learning. Finally, an algorithm based on iterative optimization is designed to solve the proposed DsBiGL model. Experimental results on various multiview datasets have demonstrated the superiority of DsBiGL in terms of clustering results when compared with other comparative methods.
Haizhou YangQuanxue GaoWei XiaMing YangXinbo Gao
Weiqing YanX. ZhaoGuanghui YueJinlai RenJindong XuZhaowei LiuChang Tang
Xinying ZhaoWeiqing YanJinlai RenJindong XuZhaowei LiuGuanghui YueChang Tang
Xinying ZhaoWeiqing YanJinlai RenJindong XuZhaowei LiuGuanghui YueChang Tang
Kun ZhanChangqing ZhangJunpeng GuanJunsheng Wang