旋律条件的歌词生成与SeqGANs

Yihao Chen, Alexander Lerch
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引用次数: 17

摘要

歌词自动生成多年来一直受到音乐界和人工智能界的关注。由于计算能力的提高和数据驱动模型的发展,早期基于规则的方法已经大部分被基于深度学习的系统所取代。然而,许多现有的方法要么严重依赖于音乐和歌词写作的先验知识,要么通过大量抛弃旋律信息及其与文本的关系来过度简化任务。我们提出了一个基于序列生成对抗网络(Sequence Generative Adversarial Networks, SeqGAN)的端到端旋律条件歌词生成系统,该系统在给定相应旋律作为输入的情况下生成一行歌词。此外,我们用一个额外的输入条件来研究生成器的性能:要生成的歌词的主题或总体主题。我们表明,输入条件对评估指标没有负面影响,同时使网络产生更有意义的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Melody-Conditioned Lyrics Generation with SeqGANs
Automatic lyrics generation has received attention from both music and AI communities for years. Early rule-based approaches have -due to increases in computational power and evolution in data-driven modelsmostly been replaced with deep-learning-based systems. Many existing approaches, however, either rely heavily on prior knowledge in music and lyrics writing or oversimplify the task by largely discarding melodic information and its relationship with the text. We propose an end-to-end melody-conditioned lyrics generation system based on Sequence Generative Adversarial Networks (SeqGAN), which generates a line of lyrics given the corresponding melody as the input. Furthermore, we investigate the performance of the generator with an additional input condition: the theme or overarching topic of the lyrics to be generated. We show that the input conditions have no negative impact on the evaluation metrics while enabling the network to produce more meaningful results.
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