Title :
Evolutionary feature selection for artificial neural network pattern classifiers
Author :
Pham, D.T. ; Castellani, M. ; Fahmy, A.A.
Author_Institution :
Manuf. Eng. Centre, Cardiff Univ., Cardiff, UK
Abstract :
This paper presents FeaSANNT, an evolutionary procedure for feature selection and weight training for neural network classifiers. FeaSANNT exploits the global nature of evolutionary search to avoid sub-optimal peaks of performance. FeaSANNT was used to train a multi-layer perceptron classifier on seven benchmark problems. FeaSANNT attained accurate and consistent learning results, and significantly reduced the number of data attributes compared to four state-of-the-art standard filter and wrapper feature selection methods. Thanks to the robustness of evolutionary search, FeaSANNT did not require time-consuming re-tuning of the learning parameters for each test problem.
Keywords :
evolutionary computation; multilayer perceptrons; pattern classification; search problems; FeaSANNT; artificial neural network pattern classifiers; evolutionary feature selection; evolutionary search; multilayer perceptron classifier; weight training; wrapper feature selection methods; Artificial neural networks; Benchmark testing; Convergence; Evolutionary computation; Information filtering; Information filters; Learning systems; Multilayer perceptrons; Pulp manufacturing; Robustness;
Conference_Titel :
Industrial Informatics, 2009. INDIN 2009. 7th IEEE International Conference on
Conference_Location :
Cardiff, Wales
Print_ISBN :
978-1-4244-3759-7
Electronic_ISBN :
1935-4576
DOI :
10.1109/INDIN.2009.5195881