Analyzing user reactions using relevance between location information of tweets and news articles

Yun Tae Jin, Jae Beom You, Shoko Wakamiya, Hyuk Yoon Kwon

Research output: Contribution to journalArticlepeer-review

1 Scopus citations

Abstract

In this study, we analyze the extent of user reactions based on user’s tweets to news articles, demonstrating the potential for home location prediction. To achieve this, we quantify users’ reactions to specific news articles based on the textual similarity between tweets and news articles, showcasing that users’ reactions to news articles about their cities are significantly higher than those about other cities. To maximize the difference in reactions, we introduce the concept of News Distinctness, which highlights the news articles that affect a specific location. By incorporating News Distinctness with users’ reactions to the news, we magnify its effects. Through experiments conducted with tweets collected from users whose home locations are in five representative cities within the United States and news articles describing events occurring in those cities, we observed a 6.75% to 40% improvement in the reaction score when compared to the average reactions towards news for outside of home location, clearly predicting the home location. Furthermore, News Distinctness increases the difference in reaction score between news in the home location and the average of the news outside of the home location by 12% to 194%. These results demonstrate that our proposed idea can be utilized to predict the users’ location, potentially recommending meaningful information based on the users’ areas of interest.

Original languageEnglish
Article number44
JournalEPJ Data Science
Volume13
Issue number1
DOIs
StatePublished - Dec 2024

Keywords

  • Location Prediction
  • News distinctness
  • SNS analysis
  • Textual similarity

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