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Bio
I am currently working at the High-speed Computational Intelligence Lab. Our Lab focuses on information modeling based on a new ANN design concept - Successive Geometric Transformations Model (SGTM). SGTM ensures the solutions to many tasks (pattern recognition, predicting, classification, optimization, missing-data recovering or their consolidation, information protection and privacy methods...). Neural-like structures based on the SGTM as universal approximators implement the training and self-training principles based on algorithmic or hardware performing variants. SGTM uses a single methodological framework for various tasks and fast non-iterative training with the pre-defined number of computation steps. It provides repeatability of the training outcomes and the possibility of obtaining satisfactory solutions for large and small training samples.
Research Interests
Papers共 13 篇Author StatisticsCo-AuthorSimilar Experts
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SMART CITIESno. 1 (2024): 78-98
Scientific reportsno. 1 (2024): 12947-12947
Lecture notes on data engineering and communications technologiespp.372-381, (2023)
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TRANSPLANT IMMUNOLOGY (2023): 101832-101832
Lecture Notes on Data Engineering and Communications TechnologiesAdvances in Intelligent Systems, Computer Science and Digital Economics IVpp.703-711, (2023)
Myroslav Havryliuk, Iryna Dumyn
Вісник Книжкової палатиpp.23-28, (2023)
International Workshop on Informatics & Data-Driven Medicinepp.338-345, (2023)
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Energiesno. 3 (2023): 1385
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