Musical data mining for electronic music distribution

F. Pachet, G. Westermann, Damien Laigre
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引用次数: 84

Abstract

Music classification is a key ingredient for electronic music distribution. Because of the lack of standards in music classification (or the lack of enforcement of existing standards), there is a huge amount of unclassified music titles in the world. The authors propose a classification method based on a musical data mining technique based on co-occurrence and correlation analysis that can be used for classification. It gives a new approach to similarity between several titles of music or several artists. We study large corpora of textual information referring titles of music or artists whose names are decided by humans without particular constraints other than readability, and draw various hypotheses concerning the natural similarities that emerge from these corpora. Based on a clustering technique, we show that interesting groups can reveal specific music genres and allow classification of music titles in an objective manner.
面向电子音乐发行的音乐数据挖掘
音乐分类是电子音乐发行的关键因素。由于音乐分类缺乏标准(或缺乏现有标准的执行),世界上有大量未分类的音乐标题。作者提出了一种基于共现和相关分析的音乐数据挖掘技术的分类方法,可用于分类。它提供了一种新的方法来研究几个音乐名称或几个艺术家之间的相似性。我们研究了大量的文本信息语料库,这些语料库涉及音乐或艺术家的名称,这些名称由人类决定,除了可读性之外没有特别的限制,并对这些语料库中出现的自然相似性提出了各种假设。基于聚类技术,我们展示了有趣的组可以揭示特定的音乐类型,并允许以客观的方式对音乐标题进行分类。
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