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Title Prediction and Characterization of High-Activity Events in Social Media Triggered by Real-World News
Authors Janani Kalyanam, Mauricio Quezada, Bárbara Poblete, Gert Lanckriet
Publication date December 2016
Abstract On-line social networks publish information on a high
volume of
real-world events almost
instantly, becoming a primary source for breaking news. Some of these
real-world events
can end up having a very strong impact on on-line social networks. The
effect of such events
can be analyzed from several perspectives, one of them being the intensity
and characteristics
of the collective activity that it produces in the social platform. We
research 5,234 real-world
news events encompassing 43 million messages discussed on the Twitter
microblogging
service for approximately 1 year. We show empirically that exogenous news
events
naturally create collective patterns of bursty behavior in combination with
long periods of
inactivity in the network. This type of behavior agrees with other patterns
previously
observed in other types of natural collective phenomena, as well as in
individual human
communications. In addition, we propose a methodology to classify news
events according
to the different levels of intensity in activity that they produce. In
particular, we analyze the
most highly active events and observe a consistent and strikingly different
collective reaction
from users when they are exposed to such events. This reaction is
independent of an
event's reach and scope. We further observe that extremely high-activity
events have characteristics
that are quite distinguishable at the beginning stages of their outbreak.
This
allows us to predict with high precision, the top 8% of events that will
have the most impact
in the social network by just using the first 5% of the information of an
event's lifetime evolution.
This strongly implies that high-activity events are naturally prioritized
collectively by the
social network, engaging users early on, way before they are brought to the
mainstream
audience.
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Pages article e016669
Volume 11
Journal name PLOS ONE
Publisher PLOS ONE
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Reference URL View reference page