Статья

Tweets classification and sentiment analysis for personalized tweets recommendation

A. Khattak, R. Batool, F. Satti, J. Hussain, W. Khan, A. Khan, B. Hayat,
2021

Mining social network data and developing user profile from unstructured and informal data are a challenging task. The proposed research builds user profile using Twitter data which is later helpful to provide the user with personalized recommendations. Publicly available tweets are fetched and classified and sentiments expressed in tweets are extracted and normalized. This research uses domain-specific seed list to classify tweets. Semantic and syntactic analysis on tweets is performed to minimize information loss during the process of tweets classification. After precise classification and sentiment analysis, the system builds user interest-based profile by analyzing user's post on Twitter to know about user interests. The proposed system was tested on a dataset of almost 1 million tweets and was able to classify up to 96% tweets accurately. © 2020 Asad Masood Khattak et al.

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Источник

Версии

  • 1. Version of Record от 2021-04-27

Метаданные

Об авторах
  • A. Khattak
    College of Technological Innovation, Zayed University, Dubai, United Arab Emirates
  • R. Batool
    Department of Computer Engineering, Kyung Hee University, Seocheon-dong, Giheung-gu, Yongin-si, Gyeonggi-do, South Korea
  • F. Satti
    College of Engineering and Technology, University of Derby, Markeaton Street, Derby, DE223AW, United Kingdom
  • J. Hussain
    Institute of Information Systems, Innopolis University, Innopolis, Russian Federation
  • W. Khan
    Institute of Management Sciences, Peshawar, Pakistan
  • A. Khan
  • B. Hayat
Название журнала
  • Complexity
Том
  • 2020
Страницы
  • -
Ключевые слова
  • Semantics; Sentiment analysis; Social networking (online); Syntactics; Domain specific; Information loss; Personalized recommendation; Syntactic analysis; User interests; User profile; Classification (of information)
Издатель
  • Hindawi Limited
Тип документа
  • journal article
Тип лицензии Creative Commons
  • CC
Правовой статус документа
  • Свободная лицензия
Источник
  • scopus