Title :
A comparison of two ART-based neural networks for hierarchical clustering
Author_Institution :
Dept. of Comput. Sci., Victoria Univ., Wellington, New Zealand
Abstract :
The paper compares two modular neural network architectures, built up of adaptive resonance theory (ART) networks, that can develop stable two-level hierarchical clusterings of arbitrary sequences of binary input patterns. In particular, it contrasts the typical class hierarchies that the networks found on a machine learning benchmark database. It is proposed that the main difference between the two clusterings are the direct consequence of the existence or absence of an internal feedback mechanism and explicit associative links between a higher-level class and its sub-classes
Keywords :
ART neural nets; feedback; hierarchical systems; learning (artificial intelligence); neural net architecture; sequences; ART-based neural networks; adaptive resonance theory networks; arbitrary binary input pattern sequences; class hierarchies; explicit associative links; higher-level class; internal feedback mechanism; machine learning benchmark database; modular neural network architectures; stable two-level hierarchical clusterings; subclasses; Computer architecture; Computer science; Databases; Intelligent systems; Learning systems; Machine learning; Neural networks; Prototypes; Resonance; Subspace constraints;
Conference_Titel :
Artificial Neural Networks and Expert Systems, 1995. Proceedings., Second New Zealand International Two-Stream Conference on
Conference_Location :
Dunedin
Print_ISBN :
0-8186-7174-2
DOI :
10.1109/ANNES.1995.499445