DocumentCode
1467073
Title
Hierarchical growing cell structures: TreeGCS
Author
Hodge, Victoria J. ; Austin, Jim
Author_Institution
Dept. of Comput. Sci., York Univ., UK
Volume
13
Issue
2
fYear
2001
Firstpage
207
Lastpage
218
Abstract
We propose a hierarchical clustering algorithm (TreeGCS) based upon the Growing Cell Structure (GCS) neural network of B. Fritzke (1993). Our algorithm refines and builds upon the GCS base, overcoming an inconsistency in the original GCS algorithm, where the network topology is susceptible to the ordering of the input vectors. Our algorithm is unsupervised, flexible, and dynamic and we have imposed no additional parameters on the underlying GCS algorithm. Our ultimate aim is a hierarchical clustering neural network that is both consistent and stable and identifies the innate hierarchical structure present in vector-based data. We demonstrate improved stability of the GCS foundation and evaluate our algorithm against the hierarchy generated by an ascendant hierarchical clustering dendogram. Our approach emulates the hierarchical clustering of the dendogram. It demonstrates the importance of the parameter settings for GCS and how they affect the stability of the clustering
Keywords
learning by example; neural nets; pattern clustering; tree data structures; trees (mathematics); unsupervised learning; GCS algorithm; GCS foundation; GCS neural network; Growing Cell Structure; TreeGCS; ascendant hierarchical clustering dendogram; hierarchical clustering algorithm; hierarchical clustering neural network; hierarchical growing cell structures; innate hierarchical structure; input vectors; network topology; parameter settings; vector-based data; Clustering algorithms; Frequency; Helium; Hierarchical systems; Humans; Information retrieval; Network topology; Neural networks; Probability distribution; Stability;
fLanguage
English
Journal_Title
Knowledge and Data Engineering, IEEE Transactions on
Publisher
ieee
ISSN
1041-4347
Type
jour
DOI
10.1109/69.917561
Filename
917561
Link To Document