Complex networks for event detection in heterogeneous high volume news
streams
- URL: http://arxiv.org/abs/2005.13751v1
- Date: Thu, 28 May 2020 02:45:43 GMT
- Title: Complex networks for event detection in heterogeneous high volume news
streams
- Authors: Iraklis Moutidis and Hywel T.P. Williams
- Abstract summary: The volume and rate of online news increases the need for automated event detection methods thatcan operate in real time.
We develop a network-based approach that makes the workingassumption that important news events always involve named entities that are linked in news articles.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Detecting important events in high volume news streams is an important task
for a variety of purposes.The volume and rate of online news increases the need
for automated event detection methods thatcan operate in real time. In this
paper we develop a network-based approach that makes the workingassumption that
important news events always involve named entities (such as persons,
locationsand organizations) that are linked in news articles. Our approach uses
natural language processingtechniques to detect these entities in a stream of
news articles and then creates a time-stamped seriesof networks in which the
detected entities are linked by co-occurrence in articles and sentences. Inthis
prototype, weighted node degree is tracked over time and change-point detection
used to locateimportant events. Potential events are characterized and
distinguished using community detectionon KeyGraphs that relate named entities
and informative noun-phrases from related articles. Thismethodology already
produces promising results and will be extended in future to include a
widervariety of complex network analysis techniques.
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