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A Music Recommendation System Based on Acoustic Features and User Personalities

机译:基于声学特征和用户个性的音乐推荐系统

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Music recommendation attracts great attention for music providers to improve their services as the volume of new music increases quickly. It is a great challenge for users to find their interested songs from such a large size of collections. In the previous studies, common strategies can be categorized into content-based music recommendation and collaborative music filtering. Content-based recommendation systems predict users' preferences in terms of the music content. Collaborative filtering systems predict users' ratings based on the preferences of the friends of the targeting user. In this study, we proposed a hybrid approach to provide personalized music recommendations. This is achieved by extracting audio features of songs and integrating these features and user personalities for context-aware recommendation using the state-of-the-art support vector machines (SVM). Our experiments show the effectiveness of this proposed approach for personalized music recommendation.
机译:随着新音乐的数量迅速增加,音乐推荐吸引了音乐提供商极大地关注以改善其服务。对于用户来说,从如此庞大的收藏集中找到他们感兴趣的歌曲是一个巨大的挑战。在以前的研究中,常见的策略可以分为基于内容的音乐推荐和协作音乐过滤。基于内容的推荐系统根据音乐内容预测用户的偏好。协作过滤系统基于目标用户朋友的偏好来预测用户的评分。在这项研究中,我们提出了一种混合方法来提供个性化的音乐推荐。这是通过使用最新的支持向量机(SVM)提取歌曲的音频特征并将这些特征和用户个性进行集成以实现上下文感知推荐来实现的。我们的实验表明,该方法对于个性化音乐推荐的有效性。

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