通过聚类音频功能自动生成基于情绪的音乐播放列表

Mahta Bakhshizadeh, A. Moeini, Mina Latifi, M. Mahmoudi
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引用次数: 5

摘要

不可否认的是,在当今的音乐行业中,音乐推荐和播放列表生成受到的关注越来越多。其中一个主要目标是为每个用户自动生成个性化的播放列表。除此之外,在这些播放列表之间适当切换,根据用户当前的心情播放曲目,肯定会导致更先进和个性化的音乐播放器应用程序的发展。本文提供了一种数据科学的方法,通过对从用户的听力中提取的音轨进行聚类来创建音乐情绪模型。每个集群由用户收听历史中存在的具有相似音频特征的音乐曲目组成。知道用户当前正在听哪首音乐,就可以通过确定该音乐的集群来指定他们的心情。据推测,将同一组中的其他音乐曲目与下一个曲目一起播放会提高他们的满意度。并对如何使结果具有视觉可解释性提出了建议,为相应的音乐播放器的GUI设计提供了帮助。基于Last网站用户收听历史真实数据集的实验研究结果。fm受益于Spotify API澄清了框架以及支持上述假设。
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Automated Mood Based Music Playlist Generation By Clustering The Audio Features
The increase of receiving attention to music recommendation and playlist generation in today’s music industry is undeniable. One of the main goals is to generate personalized playlists automatically for each user. Beyond that, an appropriate switching among these playlists to play the tracks based on the current mood of the user would certainly lead to the development of more advanced and personalized music player apps. In this paper, a data scientific approach is provided to model the music moods which are created by clustering the tracks extracted from users’ listening. Each Cluster consists of music tracks with similar audio features existing in the user’s listening history. Knowing which music track is currently being listened by users, their mood would be specified by determining the cluster of that music. It is presumed that playing the other music tracks contained in the same cluster as the next tracks will enhance their satisfaction. A suggestion for making the results visually interpretable which could help the corresponding music players with GUI design is provided as well. Experimental results of a case study from real datasets collected from Users’ listening history on Last.fm benefiting from Spotify API clarifies the framework along with supporting the mentioned presumption.
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