TweetIT- Analyzing Topics for Twitter Users to garner Maximum Attention
نویسندگان
چکیده
Twitter, a microblogging service, is today’s most popular platform for communication in the form of short text messages, called Tweets. Users use Twitter to publish their content either for expressing concerns on information news or views on daily conversations. When this expression emerges, they are experienced by the worldwide distribution network of users and not only by the interlocutor(s). Depending upon the impact of the tweet in the form of the likes, retweets and percentage of followers increases for the user considering a window of time frame, we compute attention factor for each tweet for the selected user profiles. This factor is used to select the top 1000 Tweets, from each user profile, to form a document. Topic modelling is then applied to this document to determine the intent of the user behind the Tweets. After topics are modeled, the similarity is determined between the BBC news dataset containing the modeled topic, and the user document under evaluation. Finally, we determine the top words for a user which would enable us to find the topics which garnered attention and has been posted recently. The experiment is performed using more than 1.1M Tweets from around 500 Twitter profiles spanning Politics, Entertainment, Sports etc. and hundreds of BBC news articles. The results show that our analysis is efficient enough to enable us to find the topics which would act as a suggestion for users to get higher popularity rating for the user in the future. CCS Concepts • Information systems➝Database management system engines • Computing methodologies➝Massively parallel and high-performance simulations. This is just an example; please use the correct category and subject descriptors for your submission. The ACM Computing Classification Scheme:
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ورودعنوان ژورنال:
- CoRR
دوره abs/1711.10002 شماره
صفحات -
تاریخ انتشار 2017