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Please use this identifier to cite or link to this item: http://hdl.handle.net/10016/4153

Google™ Scholar. Others By: Galván, Inés M. - Isasi, Pedro - Molina, José M. - Sanchis, Araceli
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Title: Neural Network architectures design by Cellular Automata evolution
Author(s): Galván, Inés M.
Isasi, Pedro
Molina, José M.
Sanchis, Araceli
Publisher: Kluwer Academic Publishers
Issued date: 2000
Citation: Proceedings of the 4th World Multiconference of Systemics Cybernetics and Informatics (WMSCI 2000), 2000. Vol. III. P. 457-462.
URI: http://hdl.handle.net/10016/4153
Description: 4th Conference of Systemics Cybernetics and Informatics. Orlando, 23-26 July 2000
Abstract: The design of the architecture is a crucial step in the successful application of a neural network. However, the architecture design is basically, in most cases, a human experts job. The design depends heavily on both, the expert experience and on a tedious trial-and-error process. Therefore, the development of automatic methods to determine the architecture of feedforward neural networks is a field of interest in the neural network community. These methods are generally based on search techniques, as genetic algorithms, simulated annealing or evolutionary strategies. Most of the designed methods are based on direct representation of the parameters of the network. This representation does not allow scalability, so to represent large architectures very large structures are required. In this work, an indirect constructive encoding scheme is proposed to find optimal architectures of feed-forward neural networks. This scheme is based on cellular automata representations in order to increase the scalability of the method.
Keywords: Neural networks
Cellular automata
Machine learning
Evolutionary computation
Rights: © Springer
Appears in Collections:DI - GCERN - Artículos de revistas científicas
DI - GCERN - Comunicaciones en Congresos y otros eventos

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