Back to Search Start Over

Anomaly detection in online social networks

Authors :
Savage, David
Zhang, Xiuzhen
Yu, Xinghuo
Chou, Pauline
Wang, Qingmai
Source :
Social Networks, Volume 39, October 2014, Pages 62 to70
Publication Year :
2016

Abstract

Anomalies in online social networks can signify irregular, and often illegal behaviour. Anomalies in online social networks can signify irregular, and often illegal behaviour. Detection of such anomalies has been used to identify malicious individuals, including spammers, sexual predators, and online fraudsters. In this paper we survey existing computational techniques for detecting anomalies in online social networks. We characterise anomalies as being either static or dynamic, and as being labelled or unlabelled, and survey methods for detecting these different types of anomalies. We suggest that the detection of anomalies in online social networks is composed of two sub-processes; the selection and calculation of network features, and the classification of observations from this feature space. In addition, this paper provides an overview of the types of problems that anomaly detection can address and identifies key areas of future research.

Details

Database :
arXiv
Journal :
Social Networks, Volume 39, October 2014, Pages 62 to70
Publication Type :
Report
Accession number :
edsarx.1608.00301
Document Type :
Working Paper