On the quality of ART1 text clustering
Neural Networks - 2003 Special issue: Advances in neural networks research IJCNN'03
Real-time interactive motion transitions by a uniform posture map
Future Generation Computer Systems
Modified self-organizing map for optical flow clustering system
SSIP'07 Proceedings of the 7th WSEAS International Conference on Signal, Speech and Image Processing
Variations of the two-spiral task
Connection Science
A real-time natural motion edit by the uniform posture map algorithm
ICCSA'03 Proceedings of the 2003 international conference on Computational science and its applications: PartIII
ICCS'03 Proceedings of the 1st international conference on Computational science: PartI
The inductive inverse kinematics algorithm to manipulate the posture of an articulated body
ICCS'03 Proceedings of the 1st international conference on Computational science: PartI
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For pt.I see ibid., p.645-61 (2002). Part I of this paper defines the class of constructive unsupervised on-line learning simplified adaptive resonance theory (SART) clustering networks. Proposed instances of class SART are the symmetric fuzzy ART (S-Fuzzy ART) and the Gaussian ART (GART) network. In Part II of our work, a third network belonging to class SART, termed fully self-organizing SART (FOSART), is presented and discussed. FOSART is a constructive, soft-to-hard competitive, topology-preserving, minimum-distance-to-means clustering algorithm capable of: 1) generating processing units and lateral connections on an example-driven basis and 2) removing processing units and lateral connections on a minibatch basis. FOSART is compared with Fuzzy ART, S-Fuzzy ART, GART and other well-known clustering techniques (e.g., neural gas and self-organizing map) in several unsupervised learning tasks, such as vector quantization, perceptual grouping and 3-D surface reconstruction. These experiments prove that when compared with other unsupervised learning networks, FOSART provides an interesting balance between easy user interaction, performance accuracy, efficiency, robustness, and flexibility