基于歌词的朴素贝叶斯音乐情感分类器

Yunjing An, Shutao Sun, Shujuan Wang
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引用次数: 70

摘要

评估音乐信息检索(MIR)系统是否能提供有效的音乐资源管理是一个不断增长的兴趣。音乐最重要的特征是它的情感,它反映了人的感知。为了更有效地对中文音乐情感进行自动分类,我们利用歌词对音乐进行基于情感的分析和分类。实现文本分类的算法有很多,其中最流行的一种算法是朴素贝叶斯算法。该方法虽然简单,但能有效地对文本进行分类。在本文中,我们从一个名为百度音乐的热门网站上抓取音乐歌词及其标签,并制作了四个不同的数据集。我们还用不同的数据集训练了四个分类器,并报告了它们的性能。我们评估了由四个不同的数据集训练的分类器,我们得到的最终准确率约为68%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Naive Bayes classifiers for music emotion classification based on lyrics
There is a constantly growing interest in evaluating music information retrieval (MIR) systems that can provide effective management of the music resources. The crucial characteristic of music is its emotion, which reflect the human's perception. To do the automatic classification of Chinese music emotions more effective, we use the lyrics of music to analysis and classify music based on emotion. There are many algorithms to achieve text classification, and one of the most popular algorithms is Naive Bayes algorithm. Although it is simple, it can classify text effectively. In this paper, we crawl the music lyrics and their labels from a popular website named Baidu music and make our four different datasets. We also train four classifiers with different datasets and report their performance. We evaluate the classifiers trained by four different datasets, and the final accuracy we get is approximately 68%.
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