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Collaborative filtering and rating aggregation based on multicriteria rating

机译:基于多准则评级的协作过滤和评级汇总

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Ratings by users on various items such as hotels and movies have become easily available on the Web. In many cases, other than overall rating for each item by each user, more detailed information such as ratings from different viewpoints and free text comments, as well as aggregated information such as the average of ratings by different users, are also available. We investigated the effectiveness of six existing collaborative filtering methods for large-scale sparse multicriteria rating data. We formulated rating aggregation as a collaborative filtering problem and applied six collaborative filtering methods to it. Furthermore, we extended three of the methods to calculate user similarity using indirect users and review comments and applied them to collaborative filtering and rating aggregation. The results show that multicriteria rating approaches perform better than single criterion rating approaches. The extended methods had better performance both in collaborative filtering and in rating aggregation.
机译:用户可以在Web上轻松获得对诸如旅馆和电影之类的各种物品的评级。在许多情况下,除了每个用户对每个项目的总体评分之外,还可以提供更详细的信息(例如,来自不同观点的评分和自由文本评论)以及汇总信息(例如,不同用户的评分平均值)。我们调查了六种现有的协作过滤方法对大规模稀疏多标准评级数据的有效性。我们将评级汇总表述为协作过滤问题,并对其应用了六种协作过滤方法。此外,我们扩展了使用间接用户和查看评论来计算用户相似度的三种方法,并将其应用于协作过滤和评级汇总。结果表明,多准则评级方法的性能优于单准则评级方法。扩展方法在协作过滤和评级汇总中均具有更好的性能。

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