期刊文献+

Recommending Friends Instantly in Location-based Mobile Social Networks 被引量:4

Recommending Friends Instantly in Location-based Mobile Social Networks
下载PDF
导出
摘要 Differently from the general online social network(OSN),locationbased mobile social network(LMSN),which seamlessly integrates mobile computing and social computing technologies,has unique characteristics of temporal,spatial and social correlation.Recommending friends instantly based on current location of users in the real world has become increasingly popular in LMSN.However,the existing friend recommendation methods based on topological structures of a social network or non-topological information such as similar user profiles cannot well address the instant making friends in the real world.In this article,we analyze users' check-in behavior in a real LMSN site named Gowalla.According to this analysis,we present an approach of recommending friends instantly for LMSN users by considering the real-time physical location proximity,offline behavior similarity and friendship network information in the virtual community simultaneously.This approach effectively bridges the gap between the offline behavior of users in the real world and online friendship network information in the virtual community.Finally,we use the real user check-in dataset of Gowalla to verify the effectiveness of our approach. Differently from the general online social network (OSN), location- based mobile social network (LMSN), which seamlessly integrates mobile computing and social computing technologies, has unique characteristics of temporal, spatial and social correlation. Recommending friends instantly based on current location of users in the real world has become increasingly popular in LMSN. However, the existing friend recommendation methods based on topological structures of a social network or non-topological information such as similar user profiles cannot well address the instant making friends in the real world. In this article, we analyze users' check-in behavior in a real LMSN site named Gowalla. According to this analysis, we present an approach of recommending friends instantly for LMSN users by considering the real-time physical location proximity, offline behavior similarity and friendship network information in the virtual community simultaneously. This approach effectively bridges the gap between the offline behavior of users in the real world and online friendship network information in the virtual community. Finally, we use the real user check-in dataset of Gowalla to verify the effectiveness of our approach.
出处 《China Communications》 SCIE CSCD 2014年第2期109-127,共19页 中国通信(英文版)
基金 National Key Basic Research Program of China (973 Program) under Grant No.2012CB315802 and No.2013CB329102.National Natural Science Foundation of China under Grant No.61171102 and No.61132001.New generation broadband wireless mobile communication network Key Projects for Science and Technology Development under Grant No.2011ZX03002-002-01,Beijing Nova Program under Grant No.2008B50 and Beijing Higher Education Young Elite Teacher Project under Grant No.YETP0478
关键词 mobile social network service friend recommendation location-basedservice location proximity user behaviorsimilarity singular value decomposition 网络信息 物理位置 移动计算 社交 即时 用户配置文件 现实世界 虚拟社区
  • 相关文献

参考文献35

  • 1Xu B, Chin A, Wang H, and Wang H. Us- ing physical context in a mobile social networking application for improving friend recommendations. Proceedings of 1st International Workshop on Sensing, Networking, and Computing with Smart- phones (PhoneCom 2011), 602~609.
  • 2Lombera I M, Moser L E, Melliar-Smith P M, Chuang Y T. A Mobile Peer-to-Peer Search and Retrieval Service for Social Networks. Proceedings of IEEE First Inter- national Conference on Mobile Services (MS), 2012:72 - 79.
  • 3Froehlich J, Chen M, Smith I and Potter F. Voting with your feet: An investigative study of the relationship between place visit behavior and preference. In Proc. ACM UbiComp 2006, ACM Press (2006), 333-350.
  • 4Wang H, Chin A, and Wang H. Interplay between Social Selection and Social Influ- ence on Physical Proximity in Friendship Formation. Proceedings of SRS 2011 work- shop in conjunction with CSCW 2011.
  • 5Silva N B, Ren T, G.D.C. Cavalcanti. T. Jyh. A graph-based friend recommendation sys- tem using Genetic Algorithm, Evolutionary Computation (CEC), 2010 IEEE Congress on,18-23 July 2010,Page(s): I- 7.
  • 6Adamic L. & Adar E. Friends and neigh- bors on the web. Social Networks, 2003, 25(3):211-230.
  • 7Li C, Han J, He G, Jin X, Sun Y, Yu Y & Wu T. Fast computation of simrank for static and dynamic information networks. Proc. of EDBT'10, 2010, pp. 465-476.
  • 8Wu Zh P, Jiang Sh O~ Huang Q M. Friend Recommendation According to Appear- ances on Photos. Proc. of the seventeen ACM international conference on Multi- media, Beijing, China, pp.987-988, 2009.
  • 9Debnath S, Ganguly N and Mitra P. Feature weighting in content based recommenda- tion system using social network analysis. In Proc. ACM WWW 2008, ACM Press (2008), 1041 - 1042.
  • 10Zhang L Z, Fang H, Ng W K, Zhang J. In-tRank: Interaction Ranking-Based Trust- worthy Friend Recommendation. Proc. of IEEE 10th International Conference on Trust, Security and Privacy in Computing and Communications (TrustCom), 16-18 Nov. 2011, pp: 266- 273.

同被引文献16

引证文献4

二级引证文献13

相关作者

内容加载中请稍等...

相关机构

内容加载中请稍等...

相关主题

内容加载中请稍等...

浏览历史

内容加载中请稍等...
;
使用帮助 返回顶部