Title: An incremental learning neural network for pattern classification
Authors: Hung, CA
Lin, SF
電控工程研究所
Institute of Electrical and Control Engineering
Keywords: neural network;fuzzy adaptive Hamming net;supervised fuzzy adaptive Hamming net;character recognition
Issue Date: 1-Sep-1999
Abstract: A neural network architecture that incorporates a supervised mechanism into a fuzzy adaptive Hamming net (FAHN) is presented. The FAHN constructs hyper-rectangles that represent template weights in an unsupervised learning paradigm. Learning in the FAHN consists of creating and adjusting hyper-rectangles in feature space. By aggregating multiple hyper-rectangles into a single class, we can build a classifier, to be henceforth termed as a supervised fuzzy adaptive Hamming net (SFAHN), that discriminates between nonconvex and even discontinuous classes. The SFAHN can operate at a fast-learning rate in online (incremental) or offline (batch) applications, without becoming unstable. The performance of the SFAHN is tested on the Fisher iris data and on an online character recognition problem.
URI: http://hdl.handle.net/11536/31117
ISSN: 0218-0014
Journal: INTERNATIONAL JOURNAL OF PATTERN RECOGNITION AND ARTIFICIAL INTELLIGENCE
Volume: 13
Issue: 6
Begin Page: 913
End Page: 928
Appears in Collections:Articles