Music classification using extreme learning machines

Simone Scardapane, D. Comminiello, M. Scarpiniti, A. Uncini
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引用次数: 25

Abstract

Over the last years, automatic music classification has become a standard benchmark problem in the machine learning community. This is partly due to its inherent difficulty, and also to the impact that a fully automated classification system can have in a commercial application. In this paper we test the efficiency of a relatively new learning tool, Extreme Learning Machines (ELM), for several classification tasks on publicly available song datasets. ELM is gaining increasing attention, due to its versatility and speed in adapting its internal parameters. Since both of these attributes are fundamental in music classification, ELM provides a good alternative to standard learning models. Our results support this claim, showing a sustained gain of ELM over a feedforward neural network architecture. In particular, ELM provides a great decrease in computational training time, and has always higher or comparable results in terms of efficiency.
使用极限学习机进行音乐分类
在过去的几年里,自动音乐分类已经成为机器学习社区的一个标准基准问题。这部分是由于其固有的困难,也是由于完全自动化分类系统在商业应用程序中可能产生的影响。在本文中,我们测试了一个相对较新的学习工具,极限学习机(ELM)的效率,用于公开可用的歌曲数据集的几个分类任务。由于其通用性和适应内部参数的速度,ELM越来越受到关注。由于这两个属性都是音乐分类的基础,因此ELM为标准学习模型提供了一个很好的替代方案。我们的结果支持这一说法,显示出在前馈神经网络架构上ELM的持续增益。特别是,ELM大大减少了计算训练时间,并且在效率方面总是具有更高或相当的结果。
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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