TO THE CONTENT OF PRACTICAL CLASSES ON THE MODULE “DECISION SUPPORT SYSTEMS” OF THE ACADEMIC DISCIPLINE “INFORMATION TECHNOLOGIES IN MANAGEMENT”
DOI:
https://doi.org/10.47390/SPR1342V5I8Y2025N51Keywords:
decision support system, “QM for Windows”, MPriority, SPSS, MiniTab, expert system, neural network technology.Abstract
The article discusses the capabilities of some decision support systems, the study of which within the framework of the academic discipline “Information Technologies in Management” strengthens students' knowledge and skills in alternative methods and means of decision making.
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