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首页> 外文期刊>International Journal of Artificial Intelligence Tools: Architectures, Languages, Algorithms >Combining Language Modeling and LSA on Greek Song 'Words' for Mood Classification
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Combining Language Modeling and LSA on Greek Song 'Words' for Mood Classification

机译:将语言建模和LSA结合在希腊歌曲“单词”上进行情绪分类

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摘要

The present work presents a novel approach to song mood classification. Two language models, one absolute and one relative, are experimented with. Two distinct audio feature sets are compared against each other, and the significance of the inclusion of text stylistic features is established. Furthermore, Latent Semantic Analysis is innovatively combined with language modeling, and depicts the discriminative power of the latter. Finally, song "words" are defined in a broader sense that includes lyrics words as well as audio words, and LSA is applied to this augmented vocabulary with highly promising results. The methodology is applied to Greek songs, that are classified into one of four valence and into one of four arousal categories.
机译:本工作提出了一种新的歌曲情绪分类方法。实验了两种语言模型,一种是绝对的,一种是相对的。比较了两个不同的音频功能集,并确定了包含文本样式功能的重要性。此外,潜在语义分析已与语言建模创新地结合在一起,并描绘了后者的区分能力。最终,从广义上定义了歌曲“单词”,包括歌词单词和音频单词,并且LSA应用于此扩充的词汇表,具有很高的前景。该方法适用于希腊歌曲,分为四种价之一和四种唤醒类别之一。

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