Nonnegative matrix factorization based self-taught learning with application to music genre classification

K. Markov, T. Matsui
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引用次数: 6

Abstract

Availability of large amounts of raw unlabeled data has sparked the recent surge in semi-supervised learning research. In most works, however, it is assumed that labeled and unlabeled data come from the same distribution. This restriction is removed in the self-taught learning approach where unlabeled data can be different, but nevertheless have similar structure. First, a representation is learned from the unlabeled data via non-negative matrix factorization (NMF) and then it is applied to the labeled data used for classification. In this work, we implemented this method for the music genre classification task using two different databases: one as unlabeled data pool and the other for supervised classifier training. Music pieces come from 10 and 6 genres for each database respectively, while only one genre is common for both of them. Results from wide variety of experimental settings show that the self-taught learning method improves the classification rate when the amount of labeled data is small and, more interestingly, that consistent improvement can be achieved for a wide range of unlabeled data sizes.
基于非负矩阵分解的自学学习及其在音乐类型分类中的应用
大量未标记的原始数据的可用性引发了最近半监督学习研究的激增。然而,在大多数工作中,假设标记和未标记的数据来自相同的分布。这种限制在自学方法中被消除了,在这种方法中,未标记的数据可能不同,但具有相似的结构。首先,通过非负矩阵分解(NMF)从未标记的数据中学习到一种表示,然后将其应用于用于分类的标记数据。在这项工作中,我们使用两个不同的数据库为音乐类型分类任务实现了这种方法:一个作为未标记的数据池,另一个用于监督分类器训练。每个数据库的音乐作品分别来自10种和6种类型,而两个数据库中只有一种类型是通用的。来自各种实验设置的结果表明,当标记数据量较小时,自学学习方法可以提高分类率,更有趣的是,对于大范围的未标记数据大小,可以实现一致的改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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