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An interest propagation based movie recommendation method for social tagging system

机译:用于社交标签系统的基于兴趣传播的电影推荐方法

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Collaborative tags labeled by users in social tagging systems contain rich information about individual preference and resource content, which can further improve the performance of personalized recommender system. In this paper, a hybrid method that combines the collaborative filtering with graph-based interest propagation is proposed for movie recommendation. In the proposed method, both user and movie profiles are constructed by tags. The top-k similar users are collected by user-user interest which is calculated by the user profiles, and then a user-movie bipartite graph is constructed according to the top-k users and candidate movies. We utilize the user and movie profiles to calculate user-movie interest, and the interest is propagated in the graph until converged or the max iterations are reached. Lastly, the top-n movies in the graph are recommended to the initial user. Experimental results on MovieLens dataset demonstrate that our proposed method can achieve better performance than several baselines for the movie recommendation problem.
机译:用户在社交标签系统中标记的协作标签包含有关个人偏好和资源内容的丰富信息,这可以进一步提高个性化推荐系统的性能。本文提出了一种将协同过滤与基于图的兴趣传播相结合的混合方法用于电影推荐。在所提出的方法中,用户和电影资料都由标签构成。通过用户配置文件计算出的用户用户兴趣来收集前k位相似用户,然后根据前k位用户和候选电影构建用户电影二分图。我们利用用户和电影资料来计算用户电影的兴趣,兴趣会在图中传播,直到收敛或达到最大迭代次数为止。最后,将图表中的前n个电影推荐给初始用户。在MovieLens数据集上的实验结果表明,对于电影推荐问题,我们提出的方法比几个基准可以获得更好的性能。

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