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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 6-2, Pages 12–19 (Mi izkab312)

COMPUTER SCIENCE. CALCULATION EQUIPMENT. MANAGEMENT

Multi-agent genetic algorithm for solving knowledge extraction problem

M. I. Anchekova, Yu. Kh. Khamukova, O. V. Nagoevaa, D. Y. Zaporozhetsb, A. A. Lezhebokovb

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, 347928, Taganrog, 44, Nekrasovsky Lane

Abstract: The paper deals with one of the tasks of data intellectual analysis - the task of knowledge extraction. The urgency of solving this problem is caused by the absence of formal models of the facilities and the need for a priori knowledge of the incoming data. To solve these problems neural network technology, methods of evolutionary modeling, genetic and other population algorithms are used. The article describes the advantages of using such methods, and the ways to enhance their effectiveness are proposed. A research of software environment, which implements proposed multi-agent approach was developed, and series of computational experiments were performed.

Keywords: knowledge extraction, multi-agent system, neural network, genetic algorithm.

UDC: 004.896

Received: 27.10.2015



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