Development of a method of data interpretation in intelligent decision support systems
DOI:
https://doi.org/10.15587/1729-4061.2026.360208Keywords:
heterogeneous data, processing of various types of data, reliability of decision-making, artificial intelligenceAbstract
Intelligent decision support systems (IDSS) are the object of the study. The problem that is solved in the study is the increase in the processing of heterogeneous data while ensuring the given reliability of their processing. The hypothesis of the study is the possibility of increasing the level of reliability of heterogeneous data processing in IDSS due to the development of a method of data interpretation in IDSS.
The originality of the study consists of:
− taking into account the influence of data uncertainty on the process of processing heterogeneous data in IDSS due to the use of fuzzy analytical expressions;
− reduction of loss of reliability of heterogeneous data processing due to verification of information about IDSS and data circulating in it;
− increasing the reliability of heterogeneous data processing in IDSS due to multi-level deep learning of knowledge bases, using evolving artificial neural networks;
− estimation of zero data values in IDSS databases, due to the use of the procedure for estimating the zero data value, which achieves the prevention of looping of the method;
− carry out unambiguous classification of data, their attributes circulating in the IDSS due to the use of artificial immune detectors, which achieves an increase in the accuracy of IDSS settings and the reliability of heterogeneous data processing;
− recovery of data that was lost during the processing of heterogeneous data in IDSS due to their preliminary processing, which achieves an increase in the reliability of heterogeneous data circulating in IDSS.
The proposed method provides an increase in the efficiency of heterogeneous data processing by increasing the reliability of decision-making at the level of 14−18% due to the use of additional procedures, which is confirmed by the results of a computational experiment
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Copyright (c) 2026 Andrii Shyshatskyi, Anatolii Pavlikovskyi, Pavlo Zhuk, Oleksii Nalapko, Volodymyr Cherneha, Yurii Artabaiev, Nadiia Protas, Andrii Veretnov, Yevhen Peleshok, Danylo Pliekhov

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