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Please use this identifier to cite or link to this item: http://hdl.handle.net/10016/4427

Google™ Scholar. Others By: Molina, José M. - Galván, Inés M. - Valls, José M. - Leal, A.
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Title: Optimizing the Number of Learning Cycles in the Design of Radial Basis Neural Networks
Author(s): Molina, José M.
Galván, Inés M.
Valls, José M.
Leal, A.
Publisher: Institute of Informatics, Slovak Academy of Sciences
Issued date: 2001
Citation: Computing and Informatics, 2001, vol. 20, n.5, p. 429- 449
URI: http://hdl.handle.net/10016/4427
ISSN: 1335-9150
Abstract: Abstract. Radial Basis Neural (RBN) network has the power of the universal approximation function and the convergence of those networks is very fast compared to multilayer feedforward neural networks. However, how to determine the architecture of the RBN networks to solve a given problem is not straightforward. In addition, the number of hidden units allocated in an RBN network seems to be a critical factor in the performance of these networks. In this work, the design of RBN network is based on the cooperation of n + m agents: n RBN agents and m manager agents. The n + m agents are organized in a Multi-agent System. The training process is distributed among the n RBN agents, each one with a different number of neurons. Each agent executes a number of training cyeles, a stage, when the manager decides about that is the best RBN agent and sends it the corresponding message. The m manager agents have in charge to control the evolution of each problem. Each manager agent controls one problem. Manager agents govern the whole process; each one decides about the b~st RBN agent in each stage for each problem. The results show that the proposed method is able to find them most adequate RBN network architecture. In addition, a reduction in the number of training cyeles is obtained with the proposed Multi-agent strategy instead of sequential strategy.
Review: PeerReviewed
Keywords: Multiagent systems
Distributed systems
Distributed learning
Neural networks
Radial basis NN
Appears in Collections:DI - GCERN - Comunicaciones en Congresos y otros eventos
DI - GCERN - Artículos de revistas científicas

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