Research on Context-Awareness Mobile SNS Recommendation Algorithm
ZHANG Zhi-Jun1,2,3, LIU Hong 1,2
1.School of Information Science and Engineering, Shandong Normal University, Jinan 250014 2.Shandong Provincial Key Laboratory for Distributed Computer Software Novel Technology, Jinan, 250014 3.School of Computer Science and Technology, Shandong Jianzhu University, Jinan 250101
Abstract:Although patterns of human activity show a large degree of freedom, they exhibit structural patterns subjected by geographic and social constraints. Aiming at various problems of personalized recommendation in mobile networks, a social network recommendation algorithm is proposed with a variety of context-aware information and combined with a series of social network analysis methods.Based on geographical location and temporal information, potential social relations among users are mined deeply to find the most similar set of users for the target user, then recommendations are carried out incorporating with social relations of the mobile users to effectively solve the problem of recommendation precision. The above study can not only help LBSN designers and developers to better understand their users and grasp their want, but also help to refine the design of their system to provide users with more appropriate applications and services.The experimental results on the real-world dataset verify the feasibility and effectiveness of the proposed algorithm, and it has higher prediction accuracy compared with existing recommendation algorithms.
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