Friendship Maintenance and Prediction in Multiple Social Networks
Speaker (s):

LEE Ka Wei Roy
PhD Candidate
School of Information Systems
Singapore Management University
|
Date:
Time:
Venue:
|
|
June 21, 2016, Tuesday
5:30pm - 6:00pm
Meeting Room 4.4, Level 4
School of Information Systems
Singapore Management University
80 Stamford Road
Singapore 178902
We look forward to seeing you at this research seminar.

|
|
About the Talk
Due to the proliferation of online social networks (OSNs), users find themselves participating in multiple OSNs. These users leave their activity traces as they maintain friendships and interact with other users in these OSNs. In this work, we analyze how users maintain friendship in multiple OSNs by studying users who have accounts in both Twitter and Instagram. Specifically, we study the similarity of a user's friendship and the evenness of friendship distribution in multiple OSNs. Our study shows that most users in Twitter and Instagram prefer to maintain different friendships in the two OSNs, keeping only a small clique of common friends in across the OSNs. Based upon our empirical study, we conduct link prediction experiments to predict missing friendship links in multiple OSNs using the neighborhood features, neighborhood friendship maintenance features and cross-link features. Our link prediction experiments shows that unsupervised methods can yield good accuracy in predicting links in one OSN using another OSN data and the link prediction accuracy can be further improved using supervised method with friendship maintenance and others measures as features.
This a pre-conference talk for 27th ACM Conference on Hypertext and Social Media.
About the Speaker
LEE Ka Wei Roy is a PhD candidate in School of Information Systems, Singapore Management University, working with Professor Lim Ee-Peng. He received her Bachelor of Science (IS Management) and Master of Applied Information System from Singapore Management University. His main research interests are social network analysis and data mining. He current research focuses on studying the user behaviors and information diffusion across multiple social networks.