Effect of Feature Selection on The Accuracy of Music Genre Classification using SVM Classifier

De Rosal Ignatius Moses Setiadi, Dewangga Satriya Rahardwika, E. H. Rachmawanto, Christy Atika Sari, A. Susanto, Ibnu Utomo Wahyu Mulyono, Erna Zuni Astuti, A. Fahmi
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引用次数: 7

Abstract

This research aims to analyze the effect of feature selection on the accuracy of music genre classification using support vector machine with radial basis function kernel as a classifier. In this research, the music dataset from Spotify is used, which is one of the best-selling music streaming platforms today. The selected feature is metadata because it is considered to have simpler processing than audio feature extraction. The music contained in the Spotify dataset also has complete metadata so that the metadata feature can be used properly. At the feature selection stage, some features are combined in different combination groups (FC1, FC2, FC3, FC4). The classification results prove each feature combination has an accuracy result that has a significant difference, where the best accuracy is 80% and the lowest is 67%. Where the combination of FC1 and FC2 features produces the same accuracy of 80%, but because FC2 has a smaller number of features, so the FC2 combination is recommended because with fewer features, so logically the computing time is shorter.
特征选择对SVM分类器音乐类型分类准确率的影响
本研究旨在利用径向基函数核支持向量机作为分类器,分析特征选择对音乐类型分类准确率的影响。在这项研究中,使用了Spotify的音乐数据集,Spotify是当今最畅销的音乐流媒体平台之一。所选择的特征是元数据,因为它被认为比音频特征提取具有更简单的处理。Spotify数据集中包含的音乐也具有完整的元数据,因此可以正确使用元数据功能。在特征选择阶段,将部分特征组合成不同的组合组(FC1、FC2、FC3、FC4)。分类结果证明各特征组合的准确率结果有显著差异,其中最佳准确率为80%,最低准确率为67%。其中FC1和FC2特征的组合产生相同的80%的准确率,但由于FC2具有较少的特征数量,因此建议使用FC2组合,因为具有较少的特征,因此逻辑上计算时间更短。
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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