Competence-based song recommendation

L. Shou, Kuang Mao, Xinyuan Luo, Ke Chen, Gang Chen, Tianlei Hu
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引用次数: 6

Abstract

Singing is a popular social activity and a good way of expressing one's feelings. One important reason for unsuccessful singing performance is because the singer fails to choose a suitable song. In this paper, we propose a novel singing competence-based song recommendation framework. It is distinguished from most existing music recommendation systems which rely on the computation of listeners' interests or similarity. We model a singer's vocal competence as singer profile, which takes voice pitch, intensity, and quality into consideration. Then we propose techniques to acquire singer profiles. We also present a song profile model which is used to construct a human annotated song database. Finally, we propose a learning-to-rank scheme for recommending songs by singer profile. The experimental study on real singers demonstrates the effectiveness of our approach and its advantages over two baseline methods. To the best of our knowledge, our work is the first to study competence-based song recommendation.
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基于能力的歌曲推荐
唱歌是一种流行的社会活动,也是表达情感的好方法。歌唱表演不成功的一个重要原因是歌手没有选择合适的歌曲。在本文中,我们提出了一个新的基于歌唱能力的歌曲推荐框架。它区别于大多数现有的音乐推荐系统依赖于听众兴趣或相似度的计算。我们将歌手的声音能力建模为歌手的形象,其中考虑了音高,强度和质量。然后,我们提出了获取歌手资料的技术。我们还提出了一个歌曲轮廓模型,用于构建人类注释歌曲数据库。最后,我们提出了一种根据歌手个人资料推荐歌曲的学习排序方案。通过对真实歌手的实验研究,证明了该方法的有效性和优于两种基线方法的优点。据我们所知,我们的工作是第一个研究基于能力的歌曲推荐。
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