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arxiv: 1605.05134 · v1 · pith:ZV7URZ6Ynew · submitted 2016-05-17 · 💻 cs.SI · cs.CL· cs.IR

A Semi-automatic Method for Efficient Detection of Stories on Social Media

classification 💻 cs.SI cs.CLcs.IR
keywords storieseventstwitterreal-worldtrackefficientlysemi-automaticsources
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Twitter has become one of the main sources of news for many people. As real-world events and emergencies unfold, Twitter is abuzz with hundreds of thousands of stories about the events. Some of these stories are harmless, while others could potentially be life-saving or sources of malicious rumors. Thus, it is critically important to be able to efficiently track stories that spread on Twitter during these events. In this paper, we present a novel semi-automatic tool that enables users to efficiently identify and track stories about real-world events on Twitter. We ran a user study with 25 participants, demonstrating that compared to more conventional methods, our tool can increase the speed and the accuracy with which users can track stories about real-world events.

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