Analyzing Social Media Engagement of Computer Science Conferences
March 02, 2025 Β· Declared Dead Β· π International Conference on Software Engineering Research and Applications
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Authors
Rey Ortiz, Sharif Ahmed, Priscilla Salas, Nasir U Eisty
arXiv ID
2503.01038
Category
cs.SI: Social & Info Networks
Citations
0
Venue
International Conference on Software Engineering Research and Applications
Last Checked
4 months ago
Abstract
Context: X, formerly known as Twitter, is one of the largest social media platforms and has been widely used for communication during research conferences. While previous studies have examined how users engage with X during these events, limited research has focused on analyzing the content posted by computer science conferences. Objective: This study investigates how conferences from different areas of computer science perform on social media by analyzing their activity, follower engagement, and the content posted on X. Method: We collect posts from 22 computer science conferences and conduct statistical experiments to identify variations in content. Additionally, we perform a manual analysis of the top five posts for each engagement metric. Results: Our findings indicate statistically significant differences in category, sentiment, and post length across computer science conference posts. Among all engagement metrics, likes were the most common way users interacted with conference content. Conclusion: This study provides insights into the social media presence of computer science conferences, highlighting key differences in content, sentiment, and engagement patterns across different venues.
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