User behavior based link prediction in online social networks

Author(s):  
P Srilatha ◽  
R Manjula
2019 ◽  
Vol 31 (3) ◽  
pp. 981
Author(s):  
Fenglian Jiang ◽  
Wencan Tong ◽  
Liming Huang

2021 ◽  
Vol 2021 ◽  
pp. 1-13
Author(s):  
Jun Ge ◽  
Lei-lei Shi ◽  
Lu Liu ◽  
Hongwei Shi ◽  
John Panneerselvam

Link prediction in online social networks intends to predict users who are yet to establish their network of friends, with the motivation of offering friend recommendation based on the current network structure and the attributes of nodes. However, many existing link prediction methods do not consider important information such as community characteristics, text information, and growth mechanism. In this paper, we propose an intelligent data management mechanism based on relationship strength according to the characteristics of social networks for achieving a reliable prediction in online social networks. Secondly, by considering the network structure attributes and interest preference of users as important factors affecting the link prediction process in online social networks, we propose further improvements in the prediction process by designing a friend recommendation model with a novel incorporation of the relationship information and interest preference characteristics of users into the community detection algorithm. Finally, extensive experiments conducted on a Twitter dataset demonstrate the effectiveness of our proposed models in both dynamic community detection and link prediction.


Author(s):  
Putra Wanda ◽  
Marselina Endah Hiswati ◽  
Huang J. Jie

Manual analysis for malicious prediction in Online Social Networks (OSN) is time-consuming and costly. With growing users within the environment, it becomes one of the main obstacles. Deep learning is growing algorithm that gains a big success in computer vision problem. Currently, many research communities have proposed deep learning techniques to automate security tasks, including anomalous detection, malicious link prediction, and intrusion detection in OSN. Notably, this article describes how deep learning makes the OSN security technique more intelligent for detecting malicious activity by establishing a classifier model.


Author(s):  
Haris Mandal ◽  
Miroslav Mirchev ◽  
Sasho Gramatikov ◽  
Igor Mishkovski

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