Title :
Adaptive Evolutionary Artificial Neural Networks for Pattern Classification
Author :
Oong, Tatt Hee ; Isa, Nor Ashidi Mat
Author_Institution :
Imaging & Intell. Syst. Res. Team, Univ. Sains Malaysia, Nibong Tebal, Malaysia
Abstract :
This paper presents a new evolutionary approach called the hybrid evolutionary artificial neural network (HEANN) for simultaneously evolving an artificial neural networks (ANNs) topology and weights. Evolutionary algorithms (EAs) with strong global search capabilities are likely to provide the most promising region. However, they are less efficient in fine-tuning the search space locally. HEANN emphasizes the balancing of the global search and local search for the evolutionary process by adapting the mutation probability and the step size of the weight perturbation. This is distinguishable from most previous studies that incorporate EA to search for network topology and gradient learning for weight updating. Four benchmark functions were used to test the evolutionary framework of HEANN. In addition, HEANN was tested on seven classification benchmark problems from the UCI machine learning repository. Experimental results show the superior performance of HEANN in fine-tuning the network complexity within a small number of generations while preserving the generalization capability compared with other algorithms.
Keywords :
evolutionary computation; gradient methods; learning (artificial intelligence); neural nets; pattern classification; probability; HEANN; adaptive evolutionary algorithms; artificial neural networks; benchmark functions; global search; gradient learning; hybrid evolutionary artificial neural network; local search; mutation probability; network topology; pattern classification; space search; weight perturbation; weight updating; Artificial neural networks; Encoding; Feedforward neural networks; Network topology; Topology; Training; Adaptive evolution; neural network design; pattern classification; Algorithms; Artificial Intelligence; Benchmarking; Biological Evolution; Classification; Mutation; Neural Networks (Computer); Pattern Recognition, Automated;
Journal_Title :
Neural Networks, IEEE Transactions on
DOI :
10.1109/TNN.2011.2169426