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Sentiment Vector Space Model for Lyric-based Song Sentiment Classification

机译:基于歌词的歌曲情感分类的情感向量空间模型

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Lyric-based song sentiment classification seeks to assign songs appropriate sentiment labels such as light-hearted and heavy-hearted. Four problems render vector space model (VSM)-based text classification approach ineffective: 1) Many words within song lyrics actually contribute little to sentiment; 2) Nouns and verbs used to express sentiment are ambiguous; 3) Negations and modifiers around the sentiment keywords make particular contributions to sentiment; 4) Song lyric is usually very short. To address these problems, the sentiment vector space model (s-VSM) is proposed to represent song lyric document. The preliminary experiments prove that the s-VSM model outperforms the VSM model in the lyric-based song sentiment classification task.
机译:基于歌词的歌曲情感分类旨在为歌曲分配适当的情感标签,例如轻松和沉重。有四个问题使基于向量空间模型(VSM)的文本分类方法无效:1)歌曲歌词中的许多单词实际上对情感的贡献很小; 2)用来表达情感的名词和动词是模棱两可的; 3)围绕情感关键词的否定和修饰语对情感有特殊的贡献; 4)歌曲的歌词通常很短。为了解决这些问题,提出了情感向量空间模型(s-VSM)来代表歌曲歌词文件。初步实验证明,在基于歌词的歌曲情感分类任务中,s-VSM模型优于VSM模型。

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