| IEEE Access | 卷:7 |
| A Feature-Reduction Multi-View k-Means Clustering Algorithm | |
| Kristina P. Sinaga1  Miin-Shen Yang1  | |
| [1] Department of Applied Mathematics, Chung Yuan Christian University, Chung-Li, Taiwan; | |
| 关键词: Clustering; k-means; multi-view k-means; feature-reduction learning; feature-reduction multi-view k-means (FRMVK); | |
| DOI : 10.1109/ACCESS.2019.2934179 | |
| 来源: DOAJ | |
【 摘 要 】
The k-means clustering algorithm is the oldest and most known method in cluster analysis. It has been widely studied with various extensions and applied in a variety of substantive areas. Since internet, social network, and big data grow rapidly, multi-view data become more important. For analyzing multi-view data, various multi-view k-means clustering algorithms have been studied. However, most of multi-view k-means clustering algorithms in the literature cannot give feature reduction during clustering procedures. In general, there often exist irrelevant feature components in multi-view data sets that may cause bad performance for these clustering algorithms. There also exists high feature dimension in multi-view data sets so it is necessary to consider reducing its dimension for clustering algorithms. In this paper, a learning mechanism for the multi-view k-means algorithm to automatically compute individual feature weight is constructed. It can reduce these irrelevant feature components in each view. A new multi-view k-means objective function is firstly proposed for constructing the learning mechanism for feature weights in multi-view clustering. A schema for eliminating irrelevant feature(s) with small weight(s) is then considered for feature reduction. Therefore, a new type of multi-view k-means, called a feature-reduction multi-view k-means (FRMVK), is proposed. The computational complexity of FRMVK is also analyzed. Numerical and real data sets are used to compare FRMVK with other feature-weighted multi-view k-means algorithms. Experimental results and comparisons actually demonstrate the effectiveness and usefulness of the proposed FRMVK clustering algorithm.
【 授权许可】
Unknown