We propose a latent multi-view subspace clustering model based on Laplacian regularized representation. To emphasize the information of the representation matrix at the local level and reflect the grouping effect of clustering, a Laplacian regularization is imposed on the representation matrix. Additionally, To boost the efficiency o f c lustering, we apply nonnegative constraints on the representation matrix. A unified framework is designed to solve the proposed model by using ALM and LADMAP methods. The proposed model has excellent performance, as demonstrated by a number of experimental findings.
Congzhe YouZhenqiu ShuHonghui Fan
Congzhe YouHonghui FanZhenqiu Shu
Shuqin WangYongyong ChenLinna ZhangYigang CenViacheslav Voronin
Lihao YangYong WangYourui HuangGui‐Fu LuYazhou Ren
Baifu HuangHaoliang YuanLoi Lei Lai