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Modeling Structural Topic Transitions for Automatic Lyrics Generation

机译:自动生成歌词的结构主题转换建模

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By adopting recent advances in music creation technologies, such as digital audio workstations and singing voice synthesizers, people can now create songs in their personal computers. Computers can also assist in creating lyrics or generating them automatically, although this aspect has been less thoroughly researched and is limited to rhyme and meter. This study focuses on the structural relations in Japanese lyrics. We present novel generation models that capture the topic transitions between units peculiar to the lyrics, such as verse/chorus and line. These transitions are modeled by a Hidden Markov Model (HMM) for representing topics and topic transitions. To verify that our models generate context-suitable lyrics, we evaluate the models using a log probability of lyrics generation and fill-in-the-blanks-type test. The results show that the language model is far more effective than HMM-based models, but the HMM-based approach successfully captures the inter-verse/chorus and inter-line relations. In the result of experimental evaluation, our approach captures the inter-verse/chorus and inter-line relations.
机译:通过采用音乐创作技术的最新进展,例如数字音频工作站和歌声合成器,人们现在可以在自己的个人计算机中创作歌曲。计算机还可以帮助创建歌词或自动生成歌词,尽管对此方面的研究还不够深入,并且仅限于押韵和节拍。这项研究的重点是日语歌词中的结构关系。我们提出了新颖的生成模型,这些模型捕获了歌词特有的单元之间的主题过渡,例如韵律/合唱和行。这些转换由隐马尔可夫模型(HMM)建模,用于表示主题和主题转换。为了验证我们的模型生成了适合上下文的歌词,我们使用对数生成歌词和填空测试来评估模型。结果表明,语言模型远比基于HMM的模型有效,但是基于HMM的方法成功地捕获了句间/合唱和行间关系。在实验评估的结果中,我们的方法捕获了跨韵律/合唱和跨谱线的关系。

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