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Mining Sentiments from Songs Using Latent Dirichlet Allocation

机译:使用潜在的Dirichlet分配从歌曲的挖掘情绪

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Song-selection and mood are interdependent. If we capture a song's sentiment, we can determine the mood of the listener, which can serve as a basis for recommendation systems. Songs are generally classified according to genres, which don't entirely reflect sentiments. Thus, we require an unsupervised scheme to mine them. Sentiments are classified into either two (positive/negative) or multiple (happy/angry/sad/...) classes, depending on the application. We are interested in analyzing the feelings invoked by a song, involving multi-class sentiments. To mine the hidden sentimental structure behind a song, in terms of "topics", we consider its lyrics and use Latent Dirichlet Allocation (LDA). Each song is a mixture of moods. Topics mined by LDA can represent moods. Thus we get a scheme of collecting similar-mood songs. For validation, we use a dataset of songs containing 6 moods annotated by users of a particular website.
机译:歌曲选择和情绪是相互依存的。如果我们捕获歌曲的情绪,我们可以确定听众的情绪,可以作为推荐系统的基础。歌曲通常根据类型分类,这不完全反映情绪。因此,我们需要一个无人监督的方案来挖掘它们。根据应用程序,情绪被分类为两个(正/否定)或多个(Happy / Courent / Sad / ...)类。我们有兴趣分析一首歌曲调用的感受,涉及多级情绪。为了在歌曲后面的隐藏感情结构,就“主题”而言,我们考虑其歌词并使用潜在的Dirichlet分配(LDA)。每首歌都是情绪的混合。 LDA开采的主题可以代表心情。因此,我们得到了收集类似情绪歌曲的计划。为了验证,我们使用包含特定网站用户注释的6个情绪的歌曲数据集。

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