Received: 2019-06-16  |  Accepted: 2019-10-24  |  Published: 2019-12-15

Title

Sustainable development of organizations based on the combinatorial model of artificial intelligence


Abstract

The article specifies the organizational capabilities of application of artificial intelligence technologies in the model of sustainable development of the organization. Also, the article provided the theoretical and methodological background of the organizational changes and development, as well as determined the possibilities of application of artificial intelligence technologies in the functionality of the organization. It was proposed to use the methodological approach to application of neural networks in maintaining of the intelligent management of organizational development. There was developed the combinatorial model of artificial intelligence for decision making about the organizational development.


Keywords

artificial intelligence, sustainable development, organization, neural networks, fuzzy sets, real parameters, expert surveys


JEL classifications

M21 , O16


URI

http://jssidoi.org/jesi/article/442


DOI


Pages

1353-1376


Funding


This is an open access issue and all published articles are licensed under a
Creative Commons Attribution 4.0 International License

Authors

Kuzior, Aleksandra
Silesian University of Technology, Gliwice, Poland https://www.polsl.pl
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Kwilinski, Aleksy
London Academy of Science and Business, London, United Kingdom https://www.london-asb.co.uk
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Tkachenko, Volodymyr
London Academy of Science and Business, London, United Kingdom https://www.london-asb.co.uk
Kiev National University of Civil Engineering and Architecture, Kiev, Ukraine http://www.knuba.edu.ua
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Journal title

Entrepreneurship and Sustainability Issues

Volume

7


Number

2


Issue date

December 2019


Issue DOI


ISSN

ISSN 2345-0282 (online)


Publisher

VšĮ Entrepreneurship and Sustainability Center, Vilnius, Lithuania

Cited

Google Scholar

Article views & downloads

HTML views: 1687  |  PDF downloads: 541

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