Personalizing tags: a folksonomy-like approach for recommending movies

HetRec '11 Pub Date : 2011-10-27 DOI:10.1145/2039320.2039328
A. Said, B. Kille, E. W. D. Luca, S. Albayrak
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引用次数: 11

Abstract

Movie recommender systems attempt to find movies which are of interest for their users. However, as new movies are added, and new users join movie recommendation services, the problem of recommending suitable items becomes increasingly harder. In this paper, we present a simple way of using a priori movie data in order to improve the accuracy of collaborative filtering recommender systems. The approach decreases the sparsity of the rating matrix by inferring personal ratings on tags assigned to movies. The new tag ratings are used to find which movies to recommend. Experiments performed on data from the movie recommendation community Moviepilot show a positive effect on the quality of recommended items.
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个性化标签:一种类似大众分类法的推荐电影的方法
电影推荐系统试图找到用户感兴趣的电影。然而,随着新电影的加入,以及新用户加入电影推荐服务,推荐合适的影片的问题变得越来越困难。在本文中,我们提出了一种使用先验电影数据的简单方法来提高协同过滤推荐系统的准确性。该方法通过推断分配给电影的标签上的个人评级来降低评级矩阵的稀疏性。新的标签评级用于找到推荐的电影。在电影推荐社区Moviepilot的数据上进行的实验表明,这对推荐项目的质量有积极的影响。
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