基于部分句法分析特征选择的歌词情感分类

Minho Kim, H. Kwon
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引用次数: 25

摘要

即使旋律相似,歌曲的抒情内容也会给听众带来不同的情感感受。因此,在使用节奏、节奏、曲调、音符等与旋律相关的特征时,现有的音乐情感分类方法很难对情感进行准确的分类。因此,本文提出了一种基于部分句法分析的特征选择的基于歌词的情感分类方法。在现有情感本体的基础上,应用四种句法分析规则提取歌词情感特征。情感特征提取的准确率为73%,查全率为70%。提取的情感特征与NB、HMM和SVM机器学习方法结合使用,准确率最高达到58.8%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Lyrics-Based Emotion Classification Using Feature Selection by Partial Syntactic Analysis
Songs feel emotionally different to listeners depending on their lyrical contents, even when melodies are similar. Accordingly, when using features related to melody, like tempo, rhythm, tune, and musical note, it is difficult to classify emotions accurately through the existing music emotion classification methods. This paper therefore proposes a method for lyrics-based emotion classification using feature selection by partial syntactic analysis. Based on the existing emotion ontology, four kinds of syntactic analysis rules were applied to extract emotion features from lyrics. The precision and recall rates of the emotion feature extraction were 73% and 70%, respectively. The extracted emotion features along with the NB, HMM, and SVM machine learning methods were used, showing a maximum accuracy rate of 58.8%.
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