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Randomized machine learning procedures
Yu. S. Popkovabcde a Federal Research Center for Information Science and Control, Russian Academy of Sciences, Moscow, Russia
b Trapeznikov Institute of Control Sciences, Russian Academy of Sciences, Moscow, Russia
c Braude College of Haifa University, Karmiel, Israel
d Yugra Research Institute of Information Technologies, Khanty-Mansiysk, Russia
e Moscow Institute of Physics and Technology, Dolgoprudny, Russia
Abstract:
A new concept of machine learning based on the computer simulation of entropy-optimal randomized models is proposed. The procedures of randomized machine learning (RML) with “hard” and “soft” randomization are considered; the former imply the exact reproduction of empirical balances while the latter their rough reproduction with an accepted approximation criterion. RML algorithms are formulated as functional entropy-linear programming problems. Applications of RML procedures to text classification and the randomized forecasting of migratory interaction of regional systems are presented.
Keywords:
randomization, hard and soft randomization procedures, uncertainty, entropy, matrix norms, empirical balances, text classification, dynamic regression.
Received: 06.06.2018 Revised: 13.09.2018 Accepted: 08.11.2018
Citation:
Yu. S. Popkov, “Randomized machine learning procedures”, Avtomat. i Telemekh., 2019, no. 9, 122–142; Autom. Remote Control, 80:9 (2019), 1653–1670
Linking options:
https://www.mathnet.ru/eng/at15345 https://www.mathnet.ru/eng/at/y2019/i9/p122
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