Adaptable Multiple Neural Networks using Evolutionary Computation
Abstract
The architecture of an artificial neural network has a significant influence on its performance. For a given problem, the proper architecture is found by trial and error. This approach is time consuming and may not always produce the optimal network. In this reason, we can apply the evolutionary computation such as genetic algorithm to implement the automation of network's structure as well as the biological inspiration in neural networks to successfully adapt varying input environment. Moreover, we examine the performance of combining multiple evolving networks that are more likely to model the neurophysiology of the human brain. In the combining module, all individual networks or selected individual networks in the population are used. Also, the dynamic data set is used to provide the networks with diversity and generalization. In this model, each evolving individual network is designed to have a specific feature set and neuron connection links for given data. Then, the results are combined through the combining module to improve the generalization performance of the single network. The Iris and Austrian credit data are used in the experiment.
Recommended Citation
S. Sohn and C. H. Dagli, "Adaptable Multiple Neural Networks using Evolutionary Computation," Proceedings of SPIE - The International Society for Optical Engineering, vol. 4739, pp. 141 - 149, Society of Photo-optical Instrumentation Engineers, Jan 2002.
The definitive version is available at https://doi.org/10.1117/12.458706
Department(s)
Engineering Management and Systems Engineering
Keywords and Phrases
Combining module; Evolutionary computation; Generalization; Genetic algorithm; Multiple neural networks; Neural networks
International Standard Serial Number (ISSN)
0277-786X
Document Type
Article - Conference proceedings
Document Version
Final Version
File Type
text
Language(s)
English
Rights
© 2024 Society of Photo-optical Instrumentation Engineers, All rights reserved.
Publication Date
01 Jan 2002