題名: A New Two-Phase Clustering Algorithm Based on K-means and Hierarchical Clustering with Single-Linkage Agglomerative Method
其他題名: Graduate School of Computer Science and Information Technology, National Taichung Institute of Technology
Department of Information Management, National Taichung Institute of Technology
作者: Chen, Tung-Shou
Chen, Yu-Lin
Liou, Ming-Shan
Hsu, When-Shou
Lin, Chih-Chiang
Chiu, Yung-Hsing
關鍵字: Clustering algorithm
Hierarchical clustering
K-means
Single-linkage
agglomerative algorithm
摘要: We propose a new clustering algorithm: hierarchical K-means clustering algorithm (HKC), in this paper. HKC consists of two phases. In the first phase, HKC employs K-means clustering algorithm to split the original data into some groups. The purpose of the first phase is to handle the outliers and noises. In the second phase, HKC employs single-linkage agglomerative algorithm, which can discover the arbitrarily shaped clusters and produce a clustering tree, to merge the groups. Since the processed data are simplified to some groups by K-means, the clustering tree could be obtained quickly.In this paper, the accuracy of HKC is evaluated and compared with those of K-means and hierarchical clustering. The experimental results indicated that the accuracy of HKC is better than K-means and hierarchical clustering. Hence HKC could assist the researchers to quickly and accurately analyze data.
日期: 2008-11-10T01:50:39Z
分類:Journal of Computers第17卷

文件中的檔案:
檔案 描述 大小格式 
JOC_17_1_5.pdf609.31 kBAdobe PDF檢視/開啟


在 DSpace 系統中的文件,除了特別指名其著作權條款之外,均受到著作權保護,並且保留所有的權利。