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JOURNALS // News of the Kabardino-Balkarian Scientific Center of the Russian Academy of Sciences // Archive

News of the Kabardin-Balkar scientific center of RAS, 2015 Issue 5, Pages 24–30 (Mi izkab294)

This article is cited in 2 papers

INFORMATICS

Evolutionary approach to creating a neural network model of collective decisions of intellectual tasks

M. I. Anchekova, V. V. Bovab, O. V. Nagoevaa, A. A. Novikovb, I. A. Pshenokovaa

a Institute of Computer Science and Problems of Regional Management of KBSC of the Russian Academy of Sciences, 360000, KBR, Nalchik, 37-a, I. Armand street
b Southern Federal University 344006, Rostov-on-Don, 105/42, Bolshaya Sadovaya street

Abstract: The article examines the possibility of using an evolutionary approach to improve implementation of neural networks and self-learning mechanisms for solving problems based on multi-agent representation of knowledge. The collective use of artificial neural networks as a neural network of agents can further parallelize and distribute between local agents the processes of solving complex intellectual tasks. The algorithms of integrated evolutionary search of the weights to solve a number of learning objectives are described. We propose a genetic algorithm, generating neural network model of optimal topology. In the present genetic algorithm each individual represents a separate neural network, and the population is considered as an evolving multi-agent system in which the strategy of behavior of each agent is determined by its corresponding neural network.

Keywords: decision support system; evolutionary modeling; genetic algorithm; artificial neural networks; multi-agent system; neural network model; intelligent agent.

UDC: 002.53:004.89

Received: 28.08.2015



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