Randomization and Entropy in Machine Learning and Data Processing.

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Název: Randomization and Entropy in Machine Learning and Data Processing.
Autoři: Popkov, Yu. S.
Zdroj: Doklady Mathematics; Jun2022, Vol. 105 Issue 3, p135-157, 23p
Témata: LOAD forecasting (Electric power systems), MACHINE learning, ENTROPY, ELECTRONIC data processing, RANDOMIZATION (Statistics)
Abstrakt: Combining the concept of randomization with entropic criteria allows solutions to be obtained in the conditions of maximum uncertainty, which is very effective in machine learning and data processing. The application of this approach in data-based entropy-randomized evaluation of functions, randomized hard and soft machine learning, object clustering, and data matrix dimension reduction is demonstrated. Some applications of classification problems, forecasting the electric load of a power system, and randomized clustering of biological objects are considered. [ABSTRACT FROM AUTHOR]
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Databáze: Complementary Index
Popis
Abstrakt:Combining the concept of randomization with entropic criteria allows solutions to be obtained in the conditions of maximum uncertainty, which is very effective in machine learning and data processing. The application of this approach in data-based entropy-randomized evaluation of functions, randomized hard and soft machine learning, object clustering, and data matrix dimension reduction is demonstrated. Some applications of classification problems, forecasting the electric load of a power system, and randomized clustering of biological objects are considered. [ABSTRACT FROM AUTHOR]
ISSN:10645624
DOI:10.1134/S1064562422030073