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Informatics and Automation, 2022, Issue 21, volume 6, Pages 1145–1168
DOI: https://doi.org/10.15622/ia.21.6.3
(Mi trspy1221)
 

This article is cited in 2 scientific papers (total in 2 papers)

Artificial Intelligence, Knowledge and Data Engineering

Recurrent neural networks with continuous learning in problems of news streams multifunctional processing

V. Osipovab, S. Kuleshova, D. Miloserdovc, A. Zaytsevaa, A. Aksenova

a St. Petersburg Federal Research Center of the Russian Academy of Sciences
b St. Petersburg Institute for Informatics and Automation of RAS
c Center for system analysis and modeling JSC STC EW
Abstract: The main task of using neural networks is the prompt and accurate solution of various creative tasks, including the analysis and synthesis of news flows, while maintaining the continuity of learning. The result of such processing can be digests, filtered news streams, as well as event forecasts that allow for proactivity in management decisions. Known methods of news processing by neural networks and technical solutions that implement them do not fully provide a solution to the problems that arise in this area. It is necessary to expand their functionality, and improve the space-time signal binding in recurrent neural networks. When processing news flows, simultaneously with continuous training of recurrent neural networks, selection, recognition, restoration, prediction and synthesis of news should be carried out. To reduce the severity of the problem, a promising method of multifunctional processing of news flows is proposed using recurrent neural networks with a logical organization of layers and continuous learning. The method is based on the development of associative processing of textual information in streaming recurrent neural networks with controlled elements. The key features of this method are the multifunctional processing of information flows with changing laws of news appearance. The method provides for operational selection, recognition, restoration, forecasting and synthesis of news based on deep associative continuous processing of links between text elements. The neural network system that implements the proposed method differs from the known solutions by new elements, connections between them, as well as by the functions performed. The results of the experiments confirmed the extended functionality of the method. New features of processing news texts by streaming RNNs are revealed. The proposed solutions can be used to create a new generation of intelligent systems not only for word processing, but also for other types of information.
Keywords: recurrent neural networks, intelligent news processing, multifunctionality, continuity of learning, forecasting.
Funding agency Grant number
Ministry of Science and Higher Education of the Russian Federation FFZF-2022-0005
АНО «Аналитический центр при Правительстве Российской Федерации» (ИГК 000000D730321P5Q0002) 70-2021-00141
This work was supported by the Analytical Center for the Government of the Russian Federation (IGK 000000D730321P5Q0002), agreement No. 70-2021-00141, and by the Budget № FFZF-2022-0005.
Received: 27.09.2022
Document Type: Article
UDC: 004.827
Language: Russian
Citation: V. Osipov, S. Kuleshov, D. Miloserdov, A. Zaytseva, A. Aksenov, “Recurrent neural networks with continuous learning in problems of news streams multifunctional processing”, Informatics and Automation, 21:6 (2022), 1145–1168
Citation in format AMSBIB
\Bibitem{OsiKulMil22}
\by V.~Osipov, S.~Kuleshov, D.~Miloserdov, A.~Zaytseva, A.~Aksenov
\paper Recurrent neural networks with continuous learning in problems of news streams multifunctional processing
\jour Informatics and Automation
\yr 2022
\vol 21
\issue 6
\pages 1145--1168
\mathnet{http://mi.mathnet.ru/trspy1221}
\crossref{https://doi.org/10.15622/ia.21.6.3}
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  • https://www.mathnet.ru/eng/trspy/v21/i6/p1145
  • This publication is cited in the following 2 articles:
    Citing articles in Google Scholar: Russian citations, English citations
    Related articles in Google Scholar: Russian articles, English articles
    Informatics and Automation
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