LyCon: Lyrics Reconstruction from the Bag-of-Words Using Large Language Models

Haven Kim, Kahyun Choi
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Abstract

This paper addresses the unique challenge of conducting research in lyric studies, where direct use of lyrics is often restricted due to copyright concerns. Unlike typical data, internet-sourced lyrics are frequently protected under copyright law, necessitating alternative approaches. Our study introduces a novel method for generating copyright-free lyrics from publicly available Bag-of-Words (BoW) datasets, which contain the vocabulary of lyrics but not the lyrics themselves. Utilizing metadata associated with BoW datasets and large language models, we successfully reconstructed lyrics. We have compiled and made available a dataset of reconstructed lyrics, LyCon, aligned with metadata from renowned sources including the Million Song Dataset, Deezer Mood Detection Dataset, and AllMusic Genre Dataset, available for public access. We believe that the integration of metadata such as mood annotations or genres enables a variety of academic experiments on lyrics, such as conditional lyric generation.
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LyCon:利用大型语言模型从词袋重建歌词
由于版权问题,歌词的直接使用往往受到限制,本文探讨了歌词研究中开展研究所面临的独特挑战。与典型数据不同的是,互联网来源的歌词经常受到版权法的保护,因此有必要采用其他方法。我们的研究介绍了一种从公开可用的词袋(BoW)数据集生成无版权歌词的新方法,这些数据集包含歌词词汇,但不包含歌词本身。利用与 BoW 数据集相关的元数据和大型语言模型,我们成功地重建了歌词。我们编译并提供了一个重构歌词数据集 LyCon,该数据集与包括百万首歌曲数据集、Deezer 音乐检测数据集和 AllMusic 音乐流派数据集在内的著名来源的元数据保持一致,可供公众访问。我们相信,通过整合情绪注释或流派等元数据,可以对歌词进行各种学术实验,如条件歌词生成。
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