 |
I. V. Smirnov, Yu. M. Kuznetsova, M. A. Stankevich, O. G. Grigoriev System for Analyzing Reactions of Online Communities to Socially Significant Events |
 |
|
Abstract.
The paper presents a system for intelligent analysis of social media data to identify the reactions of online communities to socially significant events of various types. The architecture of the System and its functionality are described. An example of using the System on data from popular online communities of a small town in the Nizhny Novgorod region is presented.
Keywords:
psycholinguistic text processing, social networks, analyzing reactions to events.
DOI 10.14357/20718632250202
EDN AWZCXY
PP. 12-24.
References
1. Lazer, D., Pentland, A., Adamic, L., Aral, S., Barabási, A. L., Brewer, D., Van Alstyne, M. Computational social science, Science. 2009;323(5915):721-723. https://doi.org/10.1126/science.1167742 2. Guba K. Big Data in Sociology: New Data, New Sociology? Sotsiologicheskoe obozrenie. 2018;17(1):213-236. (In Russ.) https://doi.org/10.17323/1728-192X-2018-1-213-236 3. DiMaggio P. Adapting computational text analysis to social science (and vice versa). Big Data & Society. 2015;2(2). https://doi.org/10.1177/2053951715602908 4. Resnyansky L. Conceptual frameworks for social and cultural Big Data analytics: Answering the epistemological challenge. Big Data & Society. 2019;6(1). https://doi.org/10.1177/2053951718823815 5. Varol O. et al. Evolution of online user behavior during a social upheaval. Proceedings of the 2014 ACM conference on Web science. 2014. P. 81-90. https://doi.org/10.1145/2615569.2615699 6. Zagidullina M. Entertaining web-site as indicator of public sphere: hash tag politics on pikabu.ru. Political Linguis. 2017;65(5):189-193. (In Russ.) 7. Volosnikov R. The influence of social media on the formation and functioning of public opinion. Sotsiologicheskii al'manakh. 2019;10:82-90. (In Russ.) 8. Smirnov, I., Stankevich, M., Kuznetsova, Y., Suvorova, M., Larionov, D., Nikitina, E., Grigoriev, O. TITANIS: A tool for intelligent text analysis in social media. In Artificial Intelligence: 19th Russian Conference, RCAI 2021, Taganrog, Russia, October 11–16, 2021, Springer International Publishing; 2021. P. 232-247. https://doi.org/10.1007/978-3-030-86855-0_16 9. Smirnov I.V. Software for Psycho-Emotional Text Processing // Informatsionnye tekhnologii i vychislitel'nye sistemy. 2023;1:27-38. (In Russ.) https://doi.org/10.14357/20718632230103 10. Smirnov I.V. Intelligent text analysis based on multi-level natural language processing methods. М.: FRC CSC RAS. 2023. 356 p. (In Russ.) 11. Grigor'ev O. G., Kuznetsova Iu., Nikitina E., Smirnov I., Chudova N. V. Causative-emotive analysis. Part I. Emotional reactions of social networks users research. Psikhologicheskii zhurnal. 2022;43(3):114-121. Available from: https://psy.jes.su/S020595920020501-7-1 (Accessed 17.03.2025). (In Russ.) https://doi.org/10.31857/S020595920020501-7 12. Enikolopov S.N., Medvedeva T.I., Vorontsova O.Iu., Chudova N.V., Kuznetsova Iu.M., Penkina M.Iu., Minin A.N., Stankevich M.A., Smirnov I.V., Liubavskaia A.A. Linguistic characteristics of texts of mentally ill and healthy people // Psikhologicheskie issledovaniia. 2018;11(61). (In Russ.) https://doi.org/10.54359/ps.v11i61.258 13. Nosov A., Kuznetsova Y., Stankevich M., Smirnov I., Grigoriev O. Modeling Seasonality of Emotional Tension in Social Media. Computers. 2024;13(1):1-24. https://doi.org/10.3390/computers13010003 14. Melrose S. Seasonal affective disorder: an overview of assessment and treatment approaches // Depress. Res. Treat. Wiley Online Library. 2015;2015:178564-178564. https://doi.org/10.1155/2015/178564 15. Vaswani A. et al. Attention is all you need. Advances in neural information processing systems. 2017;30:5999-6009.
|