Applying Cluster Ensemble to Adaptive Tree Structured Clustering

5th International Workshop on Computational Intelligence & Applications Proceedings : IWCIA 2009 Page 186-191 published_at 2009-11
アクセス数 : 564
ダウンロード数 : 84

今月のアクセス数 : 3
今月のダウンロード数 : 0
File
B1001.pdf 308 KB 種類 : fulltext
Title ( eng )
Applying Cluster Ensemble to Adaptive Tree Structured Clustering
Creator
Yamaguchi Takashi
Noguchi Yuki
Ichimura Takumi
Mackin Kenneth J.
Source Title
5th International Workshop on Computational Intelligence & Applications Proceedings : IWCIA 2009
Start Page 186
End Page 191
Abstract
Adaptive tree structured clustering (ATSC) is our proposed divisive hierarchical clustering method that recursively divides a data set into 2 subsets using self-organizing feature map (SOM). In each partition, the data set is quantized by SOM and the quantized data is divided using agglomerative hierarchical clustering. ATSC can divide data sets regardless of data size in feasible time. On the other hand clustering result stability of ATSC is equally unstable as other divisive hierarchical clustering and partitioned clustering methods. In this paper, we apply cluster ensemble for each data partition of ATSC in order to improve stability. Cluster ensemble is a framework for improving partitioned clustering stability. As a result of applying cluster ensemble, ATSC yields unique clustering results that could not be yielded by previous hierarchical clustering methods. This is because a different class distances function is used in each division in ATSC.
NDC
Technology. Engineering [ 500 ]
Language
eng
Resource Type conference paper
Publisher
IEEE SMC Hiroshima Chapter
Date of Issued 2009-11
Rights
(c) Copyright by IEEE SMC Hiroshima Chapter.
Publish Type Version of Record
Access Rights open access
Source Identifier
[ISSN] 1883-3977
[URI] http://www.hil.hiroshima-u.ac.jp/iwcia/2009/