Weighted multi-view co-clustering (WMVCC) for sparse data

被引:0
|
作者
Syed Fawad Hussain
Khadija Khan
Rashad Jillani
机构
[1] G.I.K Institute,Machine Learning and Data Science (MDS) Lab
[2] G.I.K. Institute,Faculty of Computer Science and Engineering
来源
Applied Intelligence | 2022年 / 52卷
关键词
Information fusion; Clustering; Co-clustering; Multi-view clustering;
D O I
暂无
中图分类号
学科分类号
摘要
Multi-view clustering has gained importance in recent times due to the large-scale generation of data, often from multiple sources. Multi-view clustering refers to clustering a set of objects which are expressed by multiple set of features, known as views, such as movies being expressed by the list of actors or by a textual summary of its plot. Co-clustering, on the other hand, refers to the simultaneous grouping of data samples and features under the assumption that samples exhibit a pattern only under a subset of features. This paper combines multi-view clustering with co-clustering and proposes a new Weighted Multi-View Co-Clustering (WMVCC) algorithm. The motivation behind the approach is to use the diversity of features provided by multiple sources of information while exploiting the power of co-clustering. The proposed method expands the clustering objective function to a unified co-clustering objective function across all the multiple views. The algorithm follows the k-means strategy and iteratively optimizes the clustering by updating cluster labels, features, and view weights. A local search is also employed to optimize the clustering result using weighted multi-step paths in a graph. Experiments are conducted on several benchmark datasets. The results show that the proposed approach converges quickly, and the clustering performance significantly outperforms other recent and state-of-the-art algorithms on sparse datasets.
引用
收藏
页码:398 / 416
页数:18
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