The Use of Artificial Intelligence Methods in the Intelligent Decision Support System
DOI:
https://doi.org/10.18372/1990-5548.79.18437Keywords:
intelligent decision support system, artificial intelligence, decision tree, operations researchAbstract
The article is devoted to the study of the use of artificial intelligence methods in decision-making support systems, particularly in military affairs. Examples of the application of artificial intelligence methods, such as expert systems and machine learning, which can be used to optimize management and strategic decisions in military operations, are considered. Special attention is paid to the use of decision trees in military scenarios as a tool for modeling possible options for the development of events and making optimal decisions. Decision trees allow a decision support system to analyze possible courses of action based on different conditions and circumstances. The results of the study emphasize the importance of using artificial intelligence to improve the efficiency and quality of decision-making in military affairs.
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