Youling: an AI-Assisted Lyrics Creation System
- URL: http://arxiv.org/abs/2201.06724v1
- Date: Tue, 18 Jan 2022 03:57:04 GMT
- Title: Youling: an AI-Assisted Lyrics Creation System
- Authors: Rongsheng Zhang, Xiaoxi Mao, Le Li, Lin Jiang, Lin Chen, Zhiwei Hu,
Yadong Xi, Changjie Fan, Minlie Huang
- Abstract summary: This paper demonstrates textitYouling, an AI-assisted lyrics creation system, designed to collaborate with music creators.
In the lyrics generation process, textitYouling supports traditional one pass full-text generation mode as well as an interactive generation mode.
The system also provides a revision module which enables users to revise undesired sentences or words of lyrics repeatedly.
- Score: 72.00418962906083
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Recently, a variety of neural models have been proposed for lyrics
generation. However, most previous work completes the generation process in a
single pass with little human intervention. We believe that lyrics creation is
a creative process with human intelligence centered. AI should play a role as
an assistant in the lyrics creation process, where human interactions are
crucial for high-quality creation. This paper demonstrates \textit{Youling}, an
AI-assisted lyrics creation system, designed to collaborate with music
creators. In the lyrics generation process, \textit{Youling} supports
traditional one pass full-text generation mode as well as an interactive
generation mode, which allows users to select the satisfactory sentences from
generated candidates conditioned on preceding context. The system also provides
a revision module which enables users to revise undesired sentences or words of
lyrics repeatedly. Besides, \textit{Youling} allows users to use multifaceted
attributes to control the content and format of generated lyrics. The demo
video of the system is available at https://youtu.be/DFeNpHk0pm4.
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