DocumentCode
1462724
Title
Design and analysis of maximum Hopfield networks
Author
Galán-Marín, Gloria ; Pérez, José
Author_Institution
Dept. de Matematica Aplicada, Malaga Univ., Spain
Volume
12
Issue
2
fYear
2001
fDate
3/1/2001 12:00:00 AM
Firstpage
329
Lastpage
339
Abstract
Since McCulloch and Pitts presented a simplified neuron model (1943), several neuron models have been proposed. Among them, the binary maximum neuron model was introduced by Takefuji et al. and successfully applied to some combinatorial optimization problems. Takefuji et al. also presented a proof for the local minimum convergence of the maximum neural network. In this paper we discuss this convergence analysis and show that this model does not guarantee the descent of a large class of energy functions. We also propose a new maximum neuron model, the optimal competitive Hopfield model (OCHOM), that always guarantees and maximizes the decrease of any Lyapunov energy function. Funabiki et al. (1997, 1998) applied the maximum neural network for the n-queens problem and showed that this model presented the best overall performance among the existing neural networks for this problem. Lee et al. (1992) applied the maximum neural network for the bipartite subgraph problem showing that the solution quality was superior to that of the best existing algorithm. However, simulation results in the n-queens problem and in the bipartite subgraph problem show that the OCHOM is much superior to the maximum neural network in terms of the solution quality and the computation time
Keywords
Hopfield neural nets; Lyapunov methods; computational complexity; convergence; optimisation; Lyapunov energy function; OCHOM; binary maximum neuron model; bipartite subgraph problem; combinatorial optimization; computation time; convergence analysis; energy function descent; local minimum convergence; maximum Hopfield networks; maximum neural network; maximum neuron model; n-queens problem; optimal competitive Hopfield model; Computational modeling; Computer networks; Convergence; Helium; Hopfield neural networks; Integrated circuit interconnections; Minimization; Neural networks; Neurons; Telecommunication computing;
fLanguage
English
Journal_Title
Neural Networks, IEEE Transactions on
Publisher
ieee
ISSN
1045-9227
Type
jour
DOI
10.1109/72.914527
Filename
914527
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