Genetic algorithms for generation of class boundaries
- 1 January 1998
- journal article
- Published by Institute of Electrical and Electronics Engineers (IEEE) in IEEE Transactions on Systems, Man, and Cybernetics, Part B (Cybernetics)
- Vol. 28 (6) , 816-828
- https://doi.org/10.1109/3477.735391
Abstract
A method is described for finding decision boundaries, approximated by piecewise linear segments, for classifying patterns in R(N),N>/=2, using an elitist model of genetic algorithms. It involves generation and placement of a set of hyperplanes (represented by strings) in the feature space that yields minimum misclassification. A scheme for the automatic deletion of redundant hyperplanes is also developed in case the algorithm starts with an initial conservative estimate of the number of hyperplanes required for modeling the decision boundary. The effectiveness of the classification methodology, along with the generalization ability of the decision boundary, is demonstrated for different parameter values on both artificial data and real life data sets having nonlinear/overlapping class boundaries. Results are compared extensively with those of the Bayes classifier, k-NN rule and multilayer perceptron.Keywords
This publication has 11 references indexed in Scilit:
- GENETIC ALGORITHM WITH ELITIST MODEL AND ITS CONVERGENCEInternational Journal of Pattern Recognition and Artificial Intelligence, 1996
- Selection of optimal set of weights in a layered network using genetic algorithmsInformation Sciences, 1994
- Genetic-algorithm programming environmentsComputer, 1994
- Genetic algorithms for optimal image enhancementPattern Recognition Letters, 1994
- Some applications of GGA for automatic learning of class parameters in presence of wrong samplesInformation Sciences, 1993
- Multilayer perceptron, fuzzy sets, and classificationIEEE Transactions on Neural Networks, 1992
- Genetic algorithms and neural networks: optimizing connections and connectivityParallel Computing, 1990
- Learning with genetic algorithms: An overviewMachine Learning, 1988
- An introduction to computing with neural netsIEEE ASSP Magazine, 1987
- THE USE OF MULTIPLE MEASUREMENTS IN TAXONOMIC PROBLEMSAnnals of Eugenics, 1936