Increasing the Reliability of Texts of Electronic Documents Based on Soft Calculations under Parametric Uncertainty
DOI:
https://doi.org/10.47494/mesb.v21i.1072Keywords:
evolutionary modeling, data mining, database, knowledge base, genetic operators, reliability, modificationAbstract
The main approaches, principles, models, and algorithms for increasing the reliability of texts of electronic documents in automated document management systems based on the synthesis of fuzzy, evolutionary modeling methods, genetic operators with template selection mechanisms, and a suitable individual are proposed. Options for the development of GA with parametrization of operators to changing situations, as well as schemes for finding solutions that reduce labor-intensive combined search procedures, are developed.
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