Interpreting Song Lyrics with an Audio-Informed Pre-trained Language Model

Yixiao Zhang, Junyan Jiang, Gus G. Xia, S. Dixon
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引用次数: 6

Abstract

Lyric interpretations can help people understand songs and their lyrics quickly, and can also make it easier to manage, retrieve and discover songs efficiently from the growing mass of music archives. In this paper we propose BART-fusion, a novel model for generating lyric interpretations from lyrics and music audio that combines a large-scale pre-trained language model with an audio encoder. We employ a cross-modal attention module to incorporate the audio representation into the lyrics representation to help the pre-trained language model understand the song from an audio perspective, while preserving the language model's original generative performance. We also release the Song Interpretation Dataset, a new large-scale dataset for training and evaluating our model. Experimental results show that the additional audio information helps our model to understand words and music better, and to generate precise and fluent interpretations. An additional experiment on cross-modal music retrieval shows that interpretations generated by BART-fusion can also help people retrieve music more accurately than with the original BART.
用预先训练的语言模型来解释歌词
歌词解释可以帮助人们快速理解歌曲及其歌词,也可以使人们更容易地管理、检索和有效地从不断增长的音乐档案中发现歌曲。在本文中,我们提出了BART-fusion,这是一种从歌词和音乐音频中生成歌词解释的新模型,它将大规模预训练语言模型与音频编码器相结合。我们使用了一个跨模态注意模块,将音频表示合并到歌词表示中,以帮助预训练的语言模型从音频角度理解歌曲,同时保留语言模型的原始生成性能。我们还发布了歌曲解读数据集,这是一个新的大规模数据集,用于训练和评估我们的模型。实验结果表明,额外的音频信息有助于我们的模型更好地理解单词和音乐,并产生精确和流畅的解释。另一项关于跨模态音乐检索的实验表明,BART融合产生的解释也可以帮助人们比原始BART更准确地检索音乐。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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