An empirical study of design and testing of hybrid evolutionary-neural approach for classification
We propose a hybrid evolutionary-neural approach for binary classification that incorporates a special training data over-fitting minimizing selection procedure for improving the prediction accuracy on holdout sample. Our approach integrates parallel global search capability of genetic algorithms (GAs) and local gradient-descent search of the back-propagation algorithm. Using a set of simulated and real life data sets, we illustrate that the proposed hybrid approach fares well, both in training and holdout samples, when compared to the traditional back-propagation artificial neural network (ANN) and a genetic algorithm-based artificial neural network (GA-ANN).
Year of publication: |
2001
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Authors: | Pendharkar, Parag C. |
Published in: |
Omega. - Elsevier, ISSN 0305-0483. - Vol. 29.2001, 4, p. 361-374
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Publisher: |
Elsevier |
Keywords: | Artificial intelligence Artificial neural networks Genetic algorithms Discriminant analysis Classification problem Learning |
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