Skip to main contentSkip to search and navigation

UEF eREPOSITORY

    • English
    • suomi
  • English 
    • English
    • suomi
  • Login
View Item 
  •   Home
  • Artikkelit
  • Luonnontieteiden ja metsätieteiden tiedekunta
  • View Item
  •   Home
  • Artikkelit
  • Luonnontieteiden ja metsätieteiden tiedekunta
  • View Item
JavaScript is disabled for your browser. Some features of this site may not work without it.

Trend of social media news : a viewpoint of COVID-19 tweets using natural language processing

Thumbnail
Files
Article (1.459Mb)
Self archived version
published version
Date
2020
Author(s)
Olaleye, Sunday Adewale
Balogun, Oluwafemi Samson
Salami, Bukola
Unique identifier
-
Metadata
Show full item record
More information
Research Database SoleCris

Self-archived article

Citation
Olaleye, Sunday Adewale. Balogun, Oluwafemi Samson. Salami, Bukola. (2020). Trend of social media news : a viewpoint of COVID-19 tweets using natural language processing.  Proceedings of the 36th International Business Information Management Association (IBIMA), Granada, Spain, 4-5 November, 2020, 5957-5975. -.
Rights
© 2020 The Authors
Licensed under
All rights reserved
Abstract

The meteoric rise of social media news during the ongoing COVID-19 is worthy of advanced research. Freedom of speech in many parts of the world, especially the developed countries and liberty of socialization, calls for noteworthy information sharing during the panic pandemic. However, as a communication intervention during crises in the past, social media use is remarkable; the Tweets generated via Twitter during the ongoing COVID-19 is incomparable with the former records. This study examines social media news trends and compares the Tweets on COVID-19 as a corpus from Twitter. By deploying Natural Language Processing (NLP) methods on tweets, we were able to extract and quantify the similarities between some tweets over time, which means that some people say the same thing about the pandemic while other Twitter users view it differently. The tools we used are Spacy, Networkx, WordCloud, and Re. This study contributes to the social media literature by understanding the similarity and divergence of COVID-19 tweets of the public and health agencies such as the World Health Organization (WHO). The study also sheds more light on the COVID-19 sparse and densely text network and their implications for the policymakers. The study explained the limitations and proposed future studies.

Subjects
social media   COVID-19   Twitter   Tweets   news   trend   Natural Language Processing   
URI
https://erepo.uef.fi/handle/123456789/24198
Publisher
International Business Information Management Association (IBIMA)
Collections
  • Luonnontieteiden ja metsätieteiden tiedekunta [1057]
University of Eastern Finland
OpenAccess
eRepo
erepo@uef.fi
OpenUEF
Service provided by
the University of Eastern Finland Library
Library web pages
Twitter
Facebook
Youtube
Library blog
 sitemap
Search

Browse

All of the ArchiveResource types & CollectionsBy Issue DateAuthorsTitlesSubjectsFacultyDepartmentFull organizationSeriesMain subjectThis CollectionBy Issue DateAuthorsTitlesSubjectsFacultyDepartmentFull organizationSeriesMain subject

My Account

Login
University of Eastern Finland
OpenAccess
eRepo
erepo@uef.fi
OpenUEF
Service provided by
the University of Eastern Finland Library
Library web pages
Twitter
Facebook
Youtube
Library blog
 sitemap