DocumentCode
3849981
Title
Topology-Based Hierarchical Clustering of Self-Organizing Maps
Author
Kadim Tasdemir;Pavel Milenov;Brooke Tapsall
Author_Institution
European Commission Joint Research Centre, Institute for Environment and Sustainability, Monitoring Agricultural Resources Unit, Ispra, Italy
Volume
22
Issue
3
fYear
2011
Firstpage
474
Lastpage
485
Abstract
A powerful method in the analysis of datasets where there are many natural clusters with varying statistics such as different sizes, shapes, density distribution, overlaps, etc., is the use of self-organizing maps (SOMs). However, further processing tools, such as visualization and interactive clustering, are often necessary to capture the clusters from the learned SOM knowledge. A recent visualization scheme (CONNvis) and its interactive clustering utilize the data topology for SOM knowledge representation by using a connectivity matrix (a weighted Delaunay graph), CONN. In this paper, we propose an automated clustering method for SOMs, which is a hierarchical agglomerative clustering of CONN. We determine the number of clusters either by using cluster validity indices or by prior knowledge on the datasets. We show that, for the datasets used in this paper, data-topology-based hierarchical clustering can produce better partitioning than hierarchical clustering based solely on distance information.
Keywords
"Prototypes","Couplings","Indexes","Clustering algorithms","Data visualization","Clustering methods","Topology"
Journal_Title
IEEE Transactions on Neural Networks
Publisher
ieee
ISSN
1045-9227
Type
jour
DOI
10.1109/TNN.2011.2107527
Filename
5720548
Link To Document