Randomized Machine Learning: Statement, solution, applications

In this paper we propose a new machine learning concept called randomized machine learning, in which model parameters are assumed random and data are assumed to contain random errors. Distinction of this approach from “classical” machine learning is that optimal estimation deals with the probability density functions of random parameters and the “worst” probability density of random data errors. As the optimality criterion of estimation, randomized machine learning employs the generalized information entropy maximized on a set described by the system of empirical balances. We apply this approach to text classification and dynamic regression problems. The results illustrate capabilities of the approach.

Authors
Publisher
Institute of Electrical and Electronics Engineers Inc.
Language
English
Pages
27-39
Status
Published
Year
2016
Organizations
  • 1 Peoples Friendship University of Russia
Date of creation
30.10.2018
Date of change
25.02.2019
Short link
https://repository.rudn.ru/en/records/article/record/30759/
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Zaryadov I.S., Razumchik R.V., Milovanova T.A.
Distributed computer and communication networks: control, computation, communications (DCCN-2016): Proceedings of the Nineteenth International Scientific Conference. Russia, Moscow, 21-25 November 2016. Vol. 3: Youth School-Seminar. РУДН. Vol. 678. 2016. P. 489-497