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Computing information quantity as similarity measure for music classification task

机译:计算信息量作为音乐分类任务的相似性度量

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This paper proposes a novel method that can replace compression-based dissimilarity measure (CDM) in composer estimation task. The main features of the proposed method are clarity and scalability. First, since the proposed method is formalized by the information quantity, reproduction of the result is easier compared with the CDM method, where the result depends on a particular compression program. Second, the proposed method has a lower computational complexity in terms of the number of learning data compared with the CDM method. The number of correct results was compared with that of the CDM for the composer estimation task of five composers of 75 piano musical scores. The proposed method performed better than the CDM method that uses the file size compressed by a particular program.
机译:本文提出了一种新的方法,可以在Composer估计任务中取代基于压缩的不相似度量(CDM)。所提出的方法的主要特征是清晰度和可扩展性。首先,由于所提出的方法通过信息量正式化,因此与CDM方法相比,结果更容易,结果取决于特定的压缩程序。其次,与CDM方法相比,所提出的方法在学习数据的数量方面具有较低的计算复杂性。将正确的结果的数量与CDM进行比较,为5个钢琴音乐分数的五个作曲家的作曲家估计任务。所提出的方法比使用由特定程序压缩压缩的文件大小的CDM方法更好。

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