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Music Recommendation Based on Information of User Profiles, Music Genres and User Ratings

机译:基于用户简档,音乐类型和用户评级的信息的音乐推荐

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Music data has been becoming bigger and bigger in recent years. It makes online music stores hard to provide the users with good personalized services. Therefore, a number of past studies were proposed for effectively retrieving the user preferences on music. However, they countered problems such as new user, new item and rating sparsity. To cope with these problems, in this paper, we propose a creative method that integrates information of user profiles, music genres and user ratings. In terms of solving problem of new user, the user similarities can be calculated by the profiles instead of ratings. By the user similarities, the unknown ratings can be predicted using user-based Collaborative Filtering. In terms of solving problem of rating sparsity, the unknown ratings are initialized by ratings of music genres. Even facing new music items, the rating data will not be sparse due to imputing the initialized ratings. Because the rating data is enriched, the user preference can be retrieved by item-based Collaborative Filtering. The experimental results reveal that, our proposed method performs more promising than the compared methods in terms of Root Mean Squared Error.
机译:近年来,音乐数据一直变得越来越大。它使在线音乐商店难以为用户提供良好的个性化服务。因此,提出了许多过去的研究,以有效地检索音乐的用户偏好。但是,他们反驳了新用户,新项目和评级稀疏等问题。为了应对这些问题,在本文中,我们提出了一种创造性方法,该方法集成了用户简档,音乐类型和用户评级的信息。在解决新用户的问题方面,可以通过配置文件而不是额定值来计算用户相似性。通过用户相似性,可以使用基于用户的协同滤波来预测未知的额定值。就解决评级稀疏性问题而言,通过乐谱的评级初始化未知的额定值。甚至面对新的音乐项目,额定数据不会因抵消初始化的额定而而不是稀疏。因为富集数据被富集,所以可以通过基于项目的协作滤波来检索用户偏好。实验结果表明,我们所提出的方法在根均方误差方面比比较的方法执行更有希望。

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