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Analysis of User's Weight in Microblog Network Based on User Influence and Active Degree 被引量:3
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作者 Jie Lian Yun Liu +2 位作者 Zhen-Jiang Zhang Jun-Jun Cheng Fei Xiong 《Journal of Electronic Science and Technology》 CAS 2012年第4期368-377,共10页
Based on user's in-degree distribution, traditional ranking algorithms of user's weight usually neglect the considerations of the differences among user's followers and the features of user's tweets. In order to a... Based on user's in-degree distribution, traditional ranking algorithms of user's weight usually neglect the considerations of the differences among user's followers and the features of user's tweets. In order to analyze the factors which impact on user's weight, under the analysis of the data collected from SINA Microblog network, this paper discovers that user influence and active degrees are the dominant factors for this issue. The proposed algorithm evaluates user influence by user's follower number, the influence of user's followers and the reciprocity between users. User's active degree is modeled by user's participation and the quality of user's tweets. The models are tested by different data groups to confirm the parameters for the final calculation. Eventually, this paper compares the computational results with the user's ranking order given by the SINA official application. The performance of this algorithm presents a stronger stability on the fluctuant range of the value of user's weight. 展开更多
关键词 hits algorithm SINA Microblog user influence user rank.
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WWW COLLABORATIVE RECOMMENDATION BASED ON RELIABILITY
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作者 Che Haoyang Zhang Jiacai 《Journal of Electronics(China)》 2006年第2期255-258,共4页
Collaborative filtering recommender systems often suffer from the 'Matchmaker' problem, which comes from the false assumption that users are counted only based on their similarity, and high similarity means go... Collaborative filtering recommender systems often suffer from the 'Matchmaker' problem, which comes from the false assumption that users are counted only based on their similarity, and high similarity means good advisers. In order to find good advisers for every user, a matchmaker's reliability mode based on the algorithm deriving from Hits is constructed, and it is applied in the proposed World Wide Web (WWW) collaborative recommendation system. Comparative experimental results also show that our approach obviously improves the substantial performance. 展开更多
关键词 Recommendation system Collaborative filtering hits algorithm
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