Title
Twitinfo: aggregating and visualizing microblogs for event exploration
Abstract
Microblogs are a tremendous repository of user-generated content about world events. However, for people trying to understand events by querying services like Twitter, a chronological log of posts makes it very difficult to get a detailed understanding of an event. In this paper, we present TwitInfo, a system for visualizing and summarizing events on Twitter. TwitInfo allows users to browse a large collection of tweets using a timeline-based display that highlights peaks of high tweet activity. A novel streaming algorithm automatically discovers these peaks and labels them meaningfully using text from the tweets. Users can drill down to subevents, and explore further via geolocation, sentiment, and popular URLs. We contribute a recall-normalized aggregate sentiment visualization to produce more honest sentiment overviews. An evaluation of the system revealed that users were able to reconstruct meaningful summaries of events in a small amount of time. An interview with a Pulitzer Prize-winning journalist suggested that the system would be especially useful for understanding a long-running event and for identifying eyewitnesses. Quantitatively, our system can identify 80-100% of manually labeled peaks, facilitating a relatively complete view of each event studied.
Year
DOI
Venue
2011
10.1145/1978942.1978975
CHI
Keywords
DocType
Citations 
streaming algorithm,event study,user generated content
Conference
302
PageRank 
References 
Authors
10.63
26
6
Search Limit
100302
Name
Order
Citations
PageRank
Adam Marcus1120362.74
Michael S. Bernstein28604393.80
Osama Badar333112.28
David R. Karger4193672233.64
Samuel Madden5161011176.38
Robert C. Miller64412326.00