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USER SPECIFIC FRIEND RECOMMENDATION IN SOCIAL MEDIA COMMUNITY
Cong Guo 1, Xinmei Tian 1, Tao Mei 2
1. CAS Key Laboratory of Technology in Geo-spatial Information Processing and Application System, University of Science and Technology of China, Hefei Anhui, China, hefei, 230027
2. Microsoft Research, Beijing, China, Beijing 100080
*Correspondence author
#Submitted by
Subject:
Funding: Specialized Research Fund for the Doctoral Program of Higher Education (No.No. WJ2100060003), the Fundamental Research Funds for the Central Universities (No.No.WK2100060007 and No. WK2100060011)
Opened online:29 May 2014
Accepted by: none
Citation: Cong Guo, Xinmei Tian, Tao Mei.USER SPECIFIC FRIEND RECOMMENDATION IN SOCIAL MEDIA COMMUNITY[OL]. [29 May 2014] http://en.paper.edu.cn/en_releasepaper/content/4596592
 
 
Social networks nowadays have become an important form of communication in which users can post their current status or share their lives by mobile phones or the Web. In this paper, we develop an effective and efficient model to estimate continuous tie strength between users for friend recommendation with the heterogeneous data from social media community. We categorize those multimodal data into two classes: interaction data (e.g., comments, marking favorite photos) and similarity data(e.g., common friends, groups, tags, geo, visual). We propose to use asymmetric relationship in the interaction data for tie strength estimation instead of using the conventional symmetric ones. Furthermore, by exploring a user's behavior in social media community, we find that the tie strength between users can be approximately modeled as a linear function of their social connections. Based on this observation, we propose an effective and highly efficient user specific linear model for the tie strength estimation. The experiments on a popular social network show promising results and demonstrate the effectiveness of our proposed method.
Keywords:Multimedia, Friend prediction, Social network ,Multiple kernel learning
 
 
 

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