Shuping ZhaoLunke FeiJie WenBob ZhangPengyang Zhao
In this article, we propose a novel and effective incomplete multi-view clustering (IMVC) framework, referred to as incomplete multi-view clustering with regularized hierarchical graph (IMVC_RHG). Different from the existing graph learning-based IMVC methods, IMVC_RHG introduces a novel heterogeneous-graph learning and embedding strategy, which adopts the high-order structures between four tuples for each view, rather than a simple paired-sample intrinsic structure. Besides this, with the aid of the learned heterogeneous graphs, a between-view preserving strategy is designed to recover the incomplete graph for each view. Finally, a consensus representation for each sample is gained with a co-regularization term for final clustering. As a result of integrating these three learning strategies, IMVC_RHG can be flexibly applied to different types of IMVC tasks. Comparing with the other state-of-the-art methods, the proposed IMVC_RHG can achieve the best performances on real-world incomplete multi-view databases.
Jie WenZheng ZhangYong XuZuofeng Zhong
Naiyao LiangZuyuan YangZhenni LiWei Han
Jie YaoRenjie LinZhenghong LinShiping Wang
Bing HuLixin HanYi XuChang TangJunxing ZhuGui-Fu Lu
Xiaxia HeBoyue WangCuicui LuoJunbin GaoYongli HuBaocai Yin