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Semantic audio content-based music recommendation and visualization based on user preference examples

机译:基于语义音频内容的音乐推荐和基于用户偏好示例的可视化

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摘要

Preference elicitation is a challenging fundamental problem when designing recommender systems. In the present work we propose a content-based technique to automatically generate a semantic representation of the user's musical preferences directly from audio. Starting from an explicit set of music tracks provided by the user as evidence of his/her preferences, we infer high-level semantic descriptors for each track obtaining a user model. To prove the benefits of our proposal, we present two applications of our technique. In the first one, we consider three approaches to music recommendation, two of them based on a semantic music similarity measure, and one based on a semantic probabilistic model. In the second application, we address the visualization of the user's musical preferences by creating a humanoid cartoon-like character - the Musical Avatar - automatically inferred from the semantic representation. We conducted a preliminary evaluation of the proposed technique in the context of these applications with 12 subjects. The results are promising: the recommendations were positively evaluated and close to those coming from state-of-the-art metadata-based systems, and the subjects judged the generated visualizations to capture their core preferences. Finally, we highlight the advantages of the proposed semantic user model for enhancing the user interfaces of information filtering systems.
机译:在设计推荐系统时,偏好激发是一个具有挑战性的基本问题。在当前的工作中,我们提出了一种基于内容的技术,可以直接从音频中自动自动生成用户的音乐喜好的语义​​表示。从用户提供的一组明确的音乐曲目作为他/她的偏好的证据开始,我们为获得用户模型的每个曲目推断高级语义描述符。为了证明我们的建议的好处,我们介绍了我们技术的两个应用。在第一个中,我们考虑了三种音乐推荐方法,其中两种基于语义音乐相似性度量,另一种基于语义概率模型。在第二个应用程序中,我们通过创建从语义表示中自动推断出的类人动物般的卡通人物(音乐头像)来解决用户音乐喜好的可视化问题。我们在12个主题的这些应用程序的背景下对提出的技术进行了初步评估。结果令人鼓舞:这些建议得到了积极评估,并且与基于最新的基于元数据的系统的建议相接近,并且受试者对所生成的可视化文件进行了判断,以捕捉其核心偏好。最后,我们强调了所提出的语义用户模型在增强信息过滤系统用户界面方面的优势。

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