Affiliation:
1. University of Illinois at Urbana-Champaign
2. US Army Research Laboratory
Abstract
The real-time discovery of local events (e.g., protests, disasters) has been widely recognized as a fundamental socioeconomic task. Recent studies have demonstrated that the geo-tagged tweet stream serves as an unprecedentedly valuable source for local event detection. Nevertheless, how to effectively extract local events from massive geo-tagged tweet streams in real time remains challenging. To bridge the gap, we propose a method for effective and real-time local event detection from geo-tagged tweet streams. Our method, named G
eo
B
urst+
, first leverages a novel cross-modal authority measure to identify several pivots in the query window. Such pivots reveal different geo-topical activities and naturally attract similar tweets to form candidate events. G
eo
B
urst+
further summarizes the continuous stream and compares the candidates against the historical summaries to pinpoint truly interesting local events. Better still, as the query window shifts, G
eo
B
urst+
is capable of updating the event list with little time cost, thus achieving continuous monitoring of the stream. We used crowdsourcing to evaluate G
eo
B
urst+
on two million-scale datasets and found it significantly more effective than existing methods while being orders of magnitude faster.
Publisher
Association for Computing Machinery (ACM)
Subject
Artificial Intelligence,Theoretical Computer Science
Reference45 articles.
1. EvenTweet
2. James Allan Ron Papka and Victor Lavrenko. 1998. On-line new event detection and tracking. In SIGIR. 37--45. 10.1145/290941.290954 James Allan Ron Papka and Victor Lavrenko. 1998. On-line new event detection and tracking. In SIGIR. 37--45. 10.1145/290941.290954
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