Intellectual model of knowledge management in the conditions of the heterogeneity of information space
News of the Kabardin-Balkar scientific center of RAS, no. 6 (2020), pp. 43-51.

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

Data retrieval processes have shifted towards open processes with visualization and parameter setting and a predictive model. Data and models in hyperspace can be visualized for end users using popular data mining platforms. Numerous studies have shown how adjusting and even creating decision tree classifiers can help end users better understand the dataset and the context in which the data was collected. In order to use the possibilities of such an open approach, the article presents a method of extended intelligence, as well as a bioinspired algorithm based on the adaptive behavior of bats. This method will allow end users to analyze data in an iterative process. Based on the proposed method, knowledge discovery and the accuracy of the predictive model generated by the algorithm increase over time due to interactions between models and end users. The article describes methods of information extraction in data mining. An extended intelligence is described, including algorithms for machine learning and deep learning networks, as well as methods of rational and augmented machine learning, on the basis of which own data will be created, having a limited amount of information for training.
Keywords: data management, knowledge, soft systems, extended intelligence method.
@article{IZKAB_2020_6_a4,
     author = {E. V. Kuliev and M. P. Krivenko and V. A. Denisenko and Yu. Kh. Khamukov},
     title = {Intellectual model of knowledge management in the conditions of the heterogeneity of information space},
     journal = {News of the Kabardin-Balkar scientific center of RAS},
     pages = {43--51},
     publisher = {mathdoc},
     number = {6},
     year = {2020},
     language = {ru},
     url = {http://geodesic.mathdoc.fr/item/IZKAB_2020_6_a4/}
}
TY  - JOUR
AU  - E. V. Kuliev
AU  - M. P. Krivenko
AU  - V. A. Denisenko
AU  - Yu. Kh. Khamukov
TI  - Intellectual model of knowledge management in the conditions of the heterogeneity of information space
JO  - News of the Kabardin-Balkar scientific center of RAS
PY  - 2020
SP  - 43
EP  - 51
IS  - 6
PB  - mathdoc
UR  - http://geodesic.mathdoc.fr/item/IZKAB_2020_6_a4/
LA  - ru
ID  - IZKAB_2020_6_a4
ER  - 
%0 Journal Article
%A E. V. Kuliev
%A M. P. Krivenko
%A V. A. Denisenko
%A Yu. Kh. Khamukov
%T Intellectual model of knowledge management in the conditions of the heterogeneity of information space
%J News of the Kabardin-Balkar scientific center of RAS
%D 2020
%P 43-51
%N 6
%I mathdoc
%U http://geodesic.mathdoc.fr/item/IZKAB_2020_6_a4/
%G ru
%F IZKAB_2020_6_a4
E. V. Kuliev; M. P. Krivenko; V. A. Denisenko; Yu. Kh. Khamukov. Intellectual model of knowledge management in the conditions of the heterogeneity of information space. News of the Kabardin-Balkar scientific center of RAS, no. 6 (2020), pp. 43-51. http://geodesic.mathdoc.fr/item/IZKAB_2020_6_a4/

[1] S. V. Emelyanova, Information processing and data analysis. Software engineering. Mathematic modeling. Applied aspects of informatics, Lenand, M., 2015, 104 pp.

[2] S. V. Baushev, Authentication automated information systems and tools. Introduction to theory and practice, BHV, SPb., 2016, 304 pp.

[3] K. N. Mezentsev, Automated information systems, Academia, M., 2016, 180 pp.

[4] G. N. Fedorova, Information systems, Academia, M., 2016, 158 pp.

[5] Bazy dannykh. Databases Intellectual information processing, eds. V. V. Korneev, A. F. Gareev, S. V. Vasyutin, V. V. Reich, Publishing house “Knowledge”, M., 2000, 352 pp.

[6] V. G. Redko, Evolution, neural networks intellect: models and concepts of evolutionary cybernetics, Komkniga, M., 2005, 304 pp.

[7] V. V. Kureichik, V. M. Kureichik, L. A. Gladkov, P. V. Sorokoletov, Bioinspired methods in optimization, textbook, Fizmalit, M., 2009

[8] V. V. Kureichik, D. Yu. Zaporozhets, “Swarm algorithm in optimization problems”, Bulletin of the Southern Federal University. Technical sciences, 108:7 (2010), 28–32

[9] “D. Yu. Zaporozhets , D. V. Zaruba, V. V, Kureichik”, World Applied Sciences Journal, 23 (2013), 1032–1036

[10] E. V. Kuliev, V. A. Denisenko, Yu. Kh. Khamukov, “Cognitive architecture of bioinspired search for methods of intellectual decision-making”, Informatics, Computing and Engineering Education, 2016, no. 2 (26), 1–8 | MR

[11] E. V. Kuliev, A. A. Lezhebokov, Yu. A. Kravchenko, “Swarm algorithm of search optimization based on modeling the behavior of bats”, Izvestia SFU/Bulletin of SFU/ Technical science, 2016, no. 7 (180), 53–62