Building tools of an intelligent decision support system to identify cultural values.

Keywords: decision support system, data mining, identification of cultural values, neural networks.

Abstract

The article discusses the problem of developing an intelligent decision support system for identifying cultural values, the issues of choosing and justifying methods and tools for its construction. The methods of research and construction of complex objects, the prospects of using modern artificial neural networks as a tool for the development of an intelligent decision support system are considered. The prospects and ways of further research and use of this subject area are also identified.

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Published
2020-12-15
How to Cite
MartynenkoА., Moroz, B., & НulinаІ. (2020). Building tools of an intelligent decision support system to identify cultural values . COMPUTER-INTEGRATED TECHNOLOGIES: EDUCATION, SCIENCE, PRODUCTION, (41), 71-75. https://doi.org/10.36910/6775-2524-0560-2020-41-12