Structurization of information based on the combination of genetic, swarm and monkey algorithms
News of the Kabardin-Balkar scientific center of RAS, no. 5 (2019), pp. 5-14.

Voir la notice de l'article provenant de la source Math-Net.Ru

The paper considers an optimization algorithm for a swarm of particles. In the article, the algorithm emulates the interaction between participants to exchange information. Particle swarm optimization has been applied in many areas in optimization and in combination with other existing algorithms. This method searches for the optimal solution using agents called particles, whose trajectories are regulated by the stochastic and deterministic component. Each particle is affected by its “best” position achieved and the “best” position of the group, but it tends to move randomly. Genetic and bee algorithms are considered. A combined algorithm based on the operation of the monkey algorithm and the genetic algorithm is proposed. Experimental studies have been carried out.
Mots-clés : information structure
Keywords: genetic algorithm, bio-inspired algorithms, swarm of particles.
@article{IZKAB_2019_5_a0,
     author = {D. Yu. Kravchenko and N. V. Kulieva and Yu. S. Novikova and M. I. Anchekov},
     title = {Structurization of information based on the combination of genetic, swarm and monkey algorithms},
     journal = {News of the Kabardin-Balkar scientific center of RAS},
     pages = {5--14},
     publisher = {mathdoc},
     number = {5},
     year = {2019},
     language = {ru},
     url = {http://geodesic.mathdoc.fr/item/IZKAB_2019_5_a0/}
}
TY  - JOUR
AU  - D. Yu. Kravchenko
AU  - N. V. Kulieva
AU  - Yu. S. Novikova
AU  - M. I. Anchekov
TI  - Structurization of information based on the combination of genetic, swarm and monkey algorithms
JO  - News of the Kabardin-Balkar scientific center of RAS
PY  - 2019
SP  - 5
EP  - 14
IS  - 5
PB  - mathdoc
UR  - http://geodesic.mathdoc.fr/item/IZKAB_2019_5_a0/
LA  - ru
ID  - IZKAB_2019_5_a0
ER  - 
%0 Journal Article
%A D. Yu. Kravchenko
%A N. V. Kulieva
%A Yu. S. Novikova
%A M. I. Anchekov
%T Structurization of information based on the combination of genetic, swarm and monkey algorithms
%J News of the Kabardin-Balkar scientific center of RAS
%D 2019
%P 5-14
%N 5
%I mathdoc
%U http://geodesic.mathdoc.fr/item/IZKAB_2019_5_a0/
%G ru
%F IZKAB_2019_5_a0
D. Yu. Kravchenko; N. V. Kulieva; Yu. S. Novikova; M. I. Anchekov. Structurization of information based on the combination of genetic, swarm and monkey algorithms. News of the Kabardin-Balkar scientific center of RAS, no. 5 (2019), pp. 5-14. http://geodesic.mathdoc.fr/item/IZKAB_2019_5_a0/

[1] C. J. Alpert, P. M. Dinesh, S. S. Sachin, Handbook of Algorithms for Physical design Automation, Auer Bach Publications Taylor Francis Group, USA, 2009

[2] S. I. Rodzin, V. V. Kureichik, “Theoretical questions and modern problems of the development of cognitive bio-inspired optimization algorithms”, Cybernetics and programming, 2017, no. 3, 51–79

[3] A. P. Karpenko, Modern algorithms of search optimization. Algorithms inspired by nature, Moscow, Russia, 2014, 446 pp.

[4] A. A. Lezhebokov, E. V. Kuliev, “Visualization technologies for applied problems of data mining”, News of the Kabardin-Balkar Scientific Center of the Russian Academy of Sciences, 2019, no. 4 (90), 14–23

[5] V. V. Kurejchik, V. M. Kurejchik, “On genetic-based control”, Avtomatika I Telemekhanika, 2001, no. 10, 174–187

[6] Yu. A. Kravchenko, A. N. Natskevich, I. O. Kursitys, “Boosting model of bioinspired algorithms for solving classification and clustering problems”, News of SFU. Technical science, 2018, no. 5 (199), 120–131

[7] V. V. Kureichik, V. V. Bova, Vl. Vl. Kureichik, “Combined design search”, Educational resources and technology, 2014, no. 2 (5), 90–94

[8] Yu. A. Kravchenko, N. V. Kulieva, O. A. Loginov, D. Yu. Tereshchenko, “The use of the algorithm of bats in the tasks of knowledge management”, Informatics, computer engineering and engineering education, 2017, no. 1 (29), 68–75

[9] E. V. Kuliev, Yu. A. Kravchenko, O. A. Loginov, D. Yu. Zaporozhets, “The method of intellectual decision-making based on the bio-inspired approach”, News of the Kabardin-Balkar Scientific Center of the Russian Academy of Sciences, 2:6 (2017), 162–169

[10] E. V. Kuliev, A. A. Lezhebokov, Yu. A. Kravchenko, “The swarm algorithm of search engine optimization based on bat behavior modeling”, Bulletin of the Southern Federal University. Technical science, 2016, no. 7 (180), 53–62

[11] V. V. Kureichik, E. V. Kuliev, V. V. Kureichik, “The model of adaptive «monkey» behavior to solve the problem of the layout of EVA blocks”, Informatization and communication, 2018, no. 4, 31–37

[12] R. Vasundhara Devi, S. Siva Sathya, “Monkey behavior based algorithms A survey”, International Journal of Intelligent Systems and Applications, 9 (2017), 67–86

[13] K. Gupta, K. Deep, J. C. Bansal, “Improving the Local Search Ability of Spider Monkey Optimization Algorithm Using Quadratic Approximation for Unconstrained Optimization”, Computational Intelligence, 33 (2017), 210–240 | DOI | MR

[14] M. A. Segraves, E. Kuo, S. Caddigan, E. A. Berthiaume, K. P. Kording, “Predicting rhesus monkey eye movements during naturalimage search”, Journal of Vision, 17:3 (2017), 1–17 | DOI

[15] G. Hazrati, H. Sharma, N. Sharma, J. C. Bansal, “Modified spider monkey optimization”, IWCI 2016 -2016 International Workshop on Computational Intelligence, 2017, 209–214

[16] A. Agrawal, P. Farswan, V. Agrawal, D. C. Tiwari, J. C. Bansal, “On the hybridization of spider monkey optimization and genetic algorithms”, Advances in Intelligent Systems and Computing, 546 (2017), 185–196 | DOI

[17] E. V. Kuliev, A. A. Lezhebokov, “Study of the characteristics of a hybrid placement algorithm”, SFU Bulletin. Technical science, 2013, no. 3 (140), 255–261

[18] J. Kacprzyk, V. M. Kureichik, S. P. Malioukov, V. V. Kureichik, A. S. Malioukov, “Experimental investigation of algorithms developed”, Studies in Computational Intelligence, 2009, no. 212, 211–223, 227–236