Title :
Fuzzy min-max neural networks. I. Classification
Author :
Simpson, Patrick K.
Author_Institution :
Orincon Corp., San Diego, CA, USA
fDate :
9/1/1992 12:00:00 AM
Abstract :
A supervised learning neural network classifier that utilizes fuzzy sets as pattern classes is described. Each fuzzy set is an aggregate (union) of fuzzy set hyperboxes. A fuzzy set hyperbox is an n-dimensional box defined by a min point and a max point with a corresponding membership function. The min-max points are determined using the fuzzy min-max learning algorithm, an expansion-contraction process that can learn nonlinear class boundaries in a single pass through the data and provides the ability to incorporate new and refine existing classes without retraining. The use of a fuzzy set approach to pattern classification inherently provides a degree of membership information that is extremely useful in higher-level decision making. The relationship between fuzzy sets and pattern classification is described. The fuzzy min-max classifier neural network implementation is explained, the learning and recall algorithms are outlined, and several examples of operation demonstrate the strong qualities of this new neural network classifier
Keywords :
fuzzy set theory; learning systems; minimax techniques; neural nets; pattern recognition; fuzzy min-max learning algorithm; fuzzy min-max neural networks; fuzzy set hyperboxes; fuzzy set theory; membership function; pattern classification; pattern recognition; supervised learning neural network classifier; Aggregates; Control systems; Fuzzy neural networks; Fuzzy sets; Fuzzy systems; Neural networks; Pattern classification; Radar applications; Sonar applications; Supervised learning;
Journal_Title :
Neural Networks, IEEE Transactions on