標題: | Locality Sensitive K-means Clustering |
作者: | Liu, Chlen-Liang Hsai, Wen-Hoar Chang, Tao-Hsing 資訊工程學系 工業工程與管理學系 Department of Computer Science Department of Industrial Engineering and Management |
關鍵字: | unsupervised learning;clustering;locality sensitive clustering;dimensionality reduction;linear transformation |
公開日期: | 1-Jan-2018 |
摘要: | This study considers clustering and dimensionality reduction simultaneously to devise an unsupervised clustering algorithm called locality sensitive K-means (LS-K means). The goal is to find a linear transformation to project data points into a lower dimensional space, so that clustering can perform well in the new space. We design a novel objective function for LS-Kmeans to achieve the goal, and further show that the proposed method can be reformulated as a matrix trace minimization with constraints problem. The original optimization problem becomes a generalized eigenvalue problem when relaxing the optimization problem of LS-Kmeans by allowing the indicator entries to take arbitrary values in R. This paper also shows that the continuous solutions for the transformed cluster membership indicator vectors of LS-Kmeans are located in the subspace spanned by the first K-1 eigenvectors. In the experiments, we use two synthetic datasets to show that the proposed method can cluster non-linearly separable data points. Besides, the experimental results of eight real datasets indicate that the proposed algorithm can generally outperform other alternatives. |
URI: | http://dx.doi.org/10.6688/JISE.2018.34.1.17 http://hdl.handle.net/11536/144422 |
ISSN: | 1016-2364 |
DOI: | 10.6688/JISE.2018.34.1.17 |
期刊: | JOURNAL OF INFORMATION SCIENCE AND ENGINEERING |
Volume: | 34 |
起始頁: | 289 |
結束頁: | 305 |
Appears in Collections: | Articles |