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Review on Latest Trending Topic Detection in Twitter With Stream Processing (Using Fission Pattern)

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  • Saili Ashok Gavhane

    (Computer Engineering, Sanjivani college of Engineering, Kopargaon, India)

  • Shubham Babanrao Bhadave

    (Computer Engineering, Sanjivani college of Engineering, Kopargaon, India)

  • Vengatesan K.

    (Computer Engineering, Sanjivani college of Engineering, Kopargaon, India)

Abstract

Twitter is a famous microblogging and interpersonal interaction which benefits from more than 100 million clients. Clients make short messages relating to a wide assortment of themes. Certain subjects are featured by Twitter as the most mainstream and are known as “drifting points.” In this article, the authors will plot strategies of distinguishing and recognizing slanting themes from spilling information utilizing a fission pattern. Information from Twitter's fission-spilling API will be gathered and put into reports of equivalent span. Information accumulation strategies will take into consideration investigation over numerous timespans, including those not as of now connected with Twitter-distinguished inclining themes. Term recurrence converse archive recurrence investigation and relative standardized term recurrence examination are performed on the reports to distinguish the slanting themes.

Suggested Citation

  • Saili Ashok Gavhane & Shubham Babanrao Bhadave & Vengatesan K., 2019. "Review on Latest Trending Topic Detection in Twitter With Stream Processing (Using Fission Pattern)," International Journal of Applied Evolutionary Computation (IJAEC), IGI Global, vol. 10(2), pages 43-47, April.
  • Handle: RePEc:igg:jaec00:v:10:y:2019:i:2:p:43-47
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