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Micro-Blog Friend-Recommendation Based on Topic Analysis and Circle Found

机译:基于主题分析和圈子发现的微博好友推荐

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Because of the increasing popularity of Sina micro-blog, its data volume gets larger and larger. Friend recommendation gets harder. Users' behavior on Sina micro-blog reflects their value and interests. People who have similar interests are more likely to become friends. In view of the above-mentioned facts, we build micro-blog topic model based on users' operations and the concept of time slices. Then calculate the user similarity based on topic probability distribution that we get through the topic model. After that, clustering the users and getting social circles. Recalculating the user similarity based on circle structure and calculates user's trust degree of other users. In the end we can finish the friend recommendation based on user similarity and trust degree. Experimental results show this algorithm is better than traditional methods.
机译:由于新浪微博的日益普及,其数据量越来越大。朋友推荐越来越难。用户在新浪微博上的行为反映了他们的价值和兴趣。兴趣相似的人更有可能成为朋友。鉴于上述事实,我们基于用户的操作和时间片的概念,建立了微博主题模型。然后根据通过主题模型获得的主题概率分布来计算用户相似度。之后,将用户聚集起来并获得社交圈。根据圈子结构重新计算用户相似度,并计算其他用户的信任度。最后,我们可以根据用户的相似度和信任度来完成好友推荐。实验结果表明,该算法优于传统算法。

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