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arxiv 1906.12328 v1 pith:PTH3ZAEH submitted 2019-06-16 cs.SI cs.LGstat.ML

Anomaly Detection with Joint Representation Learning of Content and Connection

classification cs.SI cs.LGstat.ML
keywords contentusersbehaviorinformationpoliticstweetsuseranalyzing
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Social media sites are becoming a key factor in politics. These platforms are easy to manipulate for the purpose of distorting information space to confuse and distract voters. Past works to identify disruptive patterns are mostly focused on analyzing the content of tweets. In this study, we jointly embed the information from both user posted content as well as a user's follower network, to detect groups of densely connected users in an unsupervised fashion. We then investigate these dense sub-blocks of users to flag anomalous behavior. In our experiments, we study the tweets related to the upcoming 2019 Canadian Elections, and observe a set of densely-connected users engaging in local politics in different provinces, and exhibiting troll-like behavior.

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