For citation: Nefedov S.I.., Vartanov S.A., Rozhin A.K. Engineering Implementation of a Mathematical Model of Social Conflict Representation // Mediascope. 2024. 3. Available at: https://www.mediascope.ru/2869
© Sergei I. Nefedov
DEng., Deputy Director of the Tikhonov Moscow Institute of Electronics and Mathematics, NRU HSE, Director of the Scientific-Technical Center of Applied Electronics, Tikhonov Moscow Institute of Electronics and Mathematics, NRU HSE (Mosco, Russia), snefedov@hse.ru
© Sergei A. Vartanov
Doctor of Sociology, PhD in Physics and Mathematics, Professor, NRU HSE (Moscow, Russia), svartanov@hse.ru
© Andrei K. Rozhin
Student at NRU HSE, Researcher at the Science and Technology Center of Applied Electronics, Tikhonov Moscow Institute of Electronics and Mathematics (Moscow, Russia), akrozhin@edu.hse.ru
Abstract
The article substantiates the expediency of using technical methods of processing linguistic information in conducting research on the representation of social conflict. In the context of the development of the direction of digital media and media communications, the emergence of an independent direction of media engineering is shown and the distinctive features characterizing it, according to the authors, are formulated. It is proved that one of the modern technologies that will be actively used in media engineering is the technology of artificial intelligence and neural networks. The article provides an overview of the current level of development of artificial intelligence technologies and substantiates the use of large language models as the basis for the model of representation of social conflict. Conclusions are drawn about the possible directions of advancement of the developed model of representation of social conflict
Keywords: social conflict, media communication, media engineering, artificial intelligence, neural networks, large language model
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