Publication | Closed Access
Accurately detecting trolls in slashdot zoo via decluttering
45
Citations
16
References
2014
Year
Abuse DetectionEngineeringInformation SecurityInformation ForensicsSlashdot ZooComputational Social ScienceSocial MediaInformation RetrievalData ScienceData MiningTroll Identification AlgorithmSocial Network SecurityData ManagementSocial Medium MiningSocial Network AnalysisComputer ScienceSocial ComputingOnline Social NetworkBotnet DetectionArtsDistributed Search Engine
Online social networks like Slashdot bring valuable information to millions of users - but their accuracy is based on the integrity of their user base. Unfortunately, there are many on Slashdot who post misinformation and compromise system integrity. In this paper, we develop a general algorithm called TIA (short for Troll Identification Algorithm) to classify users of an online social network as malicious (e.g. trolls on Slashdot) or benign (i.e. normal honest users). Though applicable to many signed social networks, TIA has been tested on troll detection on Slashdot Zoo under a wide variety of parameter settings. Its running time is faster than many past algorithms and it is significantly more accurate than existing methods.
| Year | Citations | |
|---|---|---|
Page 1
Page 1