PDMX:用于符号音乐处理的大规模公共领域音乐 XML 数据集

Phillip Long, Zachary Novack, Taylor Berg-Kirkpatrick, Julian McAuley
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摘要

最近,人工智能音乐生成系统的爆炸式发展引发了许多关于数据版权、音乐家音乐授权以及开源人工智能与大型知名公司之间冲突的问题。这些问题凸显了对可公开获取、无版权限制的音乐数据的需求,而这方面的数据尤其是符号音乐数据非常缺乏。为了缓解这一问题,我们推出了 PDMX:一个大型开源数据集,其中包含从乐谱共享论坛 MuseScore 收集的超过 25 万个公共领域的 MusicXML 乐谱,是我们所知的最大的可用无版权符号音乐数据集。PDMX 还包括大量标签和用户交互元数据,使我们能够高效地分析数据集,并筛选出高质量的用户生成乐谱。鉴于我们的数据收集过程提供了额外的元数据,我们进行了多轨音乐生成实验,评估 PDMX 的不同代表性子集如何导致下游模型的不同行为,以及用户评分统计如何用作数据质量的有效衡量标准。示例可在https://pnlong.github.io/PDMX.demo/。
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PDMX: A Large-Scale Public Domain MusicXML Dataset for Symbolic Music Processing
The recent explosion of generative AI-Music systems has raised numerous concerns over data copyright, licensing music from musicians, and the conflict between open-source AI and large prestige companies. Such issues highlight the need for publicly available, copyright-free musical data, in which there is a large shortage, particularly for symbolic music data. To alleviate this issue, we present PDMX: a large-scale open-source dataset of over 250K public domain MusicXML scores collected from the score-sharing forum MuseScore, making it the largest available copyright-free symbolic music dataset to our knowledge. PDMX additionally includes a wealth of both tag and user interaction metadata, allowing us to efficiently analyze the dataset and filter for high quality user-generated scores. Given the additional metadata afforded by our data collection process, we conduct multitrack music generation experiments evaluating how different representative subsets of PDMX lead to different behaviors in downstream models, and how user-rating statistics can be used as an effective measure of data quality. Examples can be found at https://pnlong.github.io/PDMX.demo/.
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