location: Current position: Home >> Scientific Research >> Paper Publications

View-Weighted Multi-view K-means Clustering

Hits:

Indexed by:会议论文

Date of Publication:2017-01-01

Included Journals:EI、CPCI-S

Volume:10614

Page Number:305-312

Key Words:Multi-view clustering; l(2,1) norm; Weighting; k-means

Abstract:In many clustering problems, there are dozens of data which are represented by multiple views. Different views describe different aspects of the same set of instances and provide complementary information. Considering blindly combining the information from different views will degrade the multi-view clustering result, this paper proposes a novel view-weighted multi-view k-means method. Meanwhile, to reduce the adverse effect of outliers, l(2,1) norm is employed to calculate the distance between data points and cluster centroids. An alternative iterative update schema is developed to find the optimal value. Comparative experiments on real world datasets reveal that the proposed method has better performance.

Pre One:阶段式动态分组实验与互动渐进学习方法的研究与实践

Next One:Self-paced Learning based Multi-view Spectral