Vestnik Sankt-Peterburgskogo Universiteta. Seriya 10. Prikladnaya Matematika. Informatika. Protsessy Upravleniya
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Vestnik Sankt-Peterburgskogo Universiteta. Seriya 10. Prikladnaya Matematika. Informatika. Protsessy Upravleniya, 2017, Volume 13, Issue 3, Pages 313–325
DOI: https://doi.org/10.21638/11701/spbu10.2017.308
(Mi vspui341)
 

Computer science

Textual trends detection at OK

E. A. Malyutin, D. Yu. Bugaichenko, A. N. Mishenin

St. Petersburg State University, 7–9, Universitetskaya nab., St. Petersburg, 199034, Russian Federation
References:
Abstract: Social networks now serve not as a mere medium for entertainment, but as an information distribution channel that is replacing classical mass media. In this article we describe a scalable trend detection system implemented with the social network OK. Actors (users and communities) of social networks form a broad agenda. The content of social networks is specific:
  • UGC (user generated content) is difficult to process;
  • actors generate a multilingual text. This requires attracting a large number of highly paid professionals in the case of classical media analysis;
  • modern social networks comprise a highly-connected society with high “response time”. Therefore, the system must work in real time;
  • social networks are used by spammers as a platform for promotion and obtrusive advertising, therefore the system should contain the ability to filter spam content.
Applying standard methods of media analysis to this seems impossible. It creates a natural demand for developing and implementing textual trend detection and analysis software. There are two main approaches of trend detection in academic papers: topic modeling (and further topics evolutionary analysis) and distributive models based on frequency-like properties of distinct terms. We conducted an analysis of scientific papers using both approaches taking into account the specific features of social networks. As a result of research, it was decided to use distributive models as a base for the system development. OK is one of the largest social networks in Russia and the CIS countries. Actors generate over 100M symbols of text every day. Even basic processing is a serious technical problem. So we are forced to use Big Data approaches through the development. We introduce lambda-architecture based on three main components:
  • daily-batch processing component, based on Apache Spark;
  • streaming processing component, based on Apache Samza;
  • mini-batch processing component, based on Spark Streaming.
The article describes in detail the architecture and technical features of each component. In conclusion we present the results of operating the system as well as discuss areas for further research and development. Refs 13. Figs 7. Table 1.
Keywords: natural language processing, trend detection, big data.
Received: March 5, 2017
Accepted: June 8, 2017
Bibliographic databases:
Document Type: Article
UDC: 519.688
Language: Russian
Citation: E. A. Malyutin, D. Yu. Bugaichenko, A. N. Mishenin, “Textual trends detection at OK”, Vestnik S.-Petersburg Univ. Ser. 10. Prikl. Mat. Inform. Prots. Upr., 13:3 (2017), 313–325
Citation in format AMSBIB
\Bibitem{MalBugMis17}
\by E.~A.~Malyutin, D.~Yu.~Bugaichenko, A.~N.~Mishenin
\paper Textual trends detection at OK
\jour Vestnik S.-Petersburg Univ. Ser. 10. Prikl. Mat. Inform. Prots. Upr.
\yr 2017
\vol 13
\issue 3
\pages 313--325
\mathnet{http://mi.mathnet.ru/vspui341}
\crossref{https://doi.org/10.21638/11701/spbu10.2017.308}
\elib{https://elibrary.ru/item.asp?id=30102290}
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  • https://www.mathnet.ru/eng/vspui/v13/i3/p313
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    Вестник Санкт-Петербургского университета. Серия 10. Прикладная математика. Информатика. Процессы управления
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    Abstract page:138
    Full-text PDF :25
    References:20
    First page:6
     
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