Title :
Detecting anomalies in Online Social Networks using graph metrics
Author :
Ravneet Kaur;Sarbjeet Singh
Author_Institution :
Computer Science and Engineering, UIET, Panjab University, Chandigarh, India
Abstract :
Online Social Networks have emerged as an interesting area for analysis where each user having a personalized user profile interact and share information with each other. Apart from analyzing the structural characteristics, detection of abnormal and anomalous activities in social networks has become need of the hour. These anomalous activities represent the rare and mischievous activities that take place in the network. Graphical structure of social networks has encouraged the researchers to use various graph metrics to detect the anomalous activities. One such measure that seemed to be highly beneficial to detect the anomalies was brokerage value which helped to detect the anomalies with high accuracy. Also, further application of the measure to different datasets verified the fact that the anomalous behavior detected by the proposed measure was efficient as compared to the already proposed measures in Oddball Algorithm.
Keywords :
"Social network services","Measurement","Curve fitting","Fitting","Graph theory","Image edge detection","Feature extraction"
Conference_Titel :
India Conference (INDICON), 2015 Annual IEEE
Electronic_ISBN :
2325-9418
DOI :
10.1109/INDICON.2015.7443800