Unsupervised Melody-Guided Lyrics Generation
- URL: http://arxiv.org/abs/2305.07760v2
- Date: Fri, 26 May 2023 00:56:58 GMT
- Title: Unsupervised Melody-Guided Lyrics Generation
- Authors: Yufei Tian, Anjali Narayan-Chen, Shereen Oraby, Alessandra Cervone,
Gunnar Sigurdsson, Chenyang Tao, Wenbo Zhao, Tagyoung Chung, Jing Huang,
Nanyun Peng
- Abstract summary: We propose to generate pleasantly listenable lyrics without training on melody-lyric aligned data.
We leverage the crucial alignments between melody and lyrics and compile the given melody into constraints to guide the generation process.
- Score: 84.22469652275714
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Automatic song writing is a topic of significant practical interest. However,
its research is largely hindered by the lack of training data due to copyright
concerns and challenged by its creative nature. Most noticeably, prior works
often fall short of modeling the cross-modal correlation between melody and
lyrics due to limited parallel data, hence generating lyrics that are less
singable. Existing works also lack effective mechanisms for content control, a
much desired feature for democratizing song creation for people with limited
music background. In this work, we propose to generate pleasantly listenable
lyrics without training on melody-lyric aligned data. Instead, we design a
hierarchical lyric generation framework that disentangles training (based
purely on text) from inference (melody-guided text generation). At inference
time, we leverage the crucial alignments between melody and lyrics and compile
the given melody into constraints to guide the generation process. Evaluation
results show that our model can generate high-quality lyrics that are more
singable, intelligible, coherent, and in rhyme than strong baselines including
those supervised on parallel data.
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