Natural language processing methods have been applied in a variety of music studies, drawing the connection between music and language. In this paper, we expand those approaches by investigating \textit{chord embeddings}, which we apply in two case studies to address two key questions: (1) what musical information do chord embeddings capture?; and (2) how might musical applications benefit from them? In our analysis, we show that they capture similarities between chords that adhere to important relationships described in music theory. In the first case study, we demonstrate that using chord embeddings in a next chord prediction task yields predictions that more closely match those by experienced musicians. In the second case study, we show the potential benefits of using the representations in tasks related to musical stylometrics.
翻译:在各种音乐研究中,自然语言处理方法被运用于音乐和语言之间的联系。在本文中,我们通过调查\ textit{和弦嵌入}来扩展这些方法,我们在两个案例研究中应用这些方法来解决两个关键问题:(1)音乐信息如何捕捉和弦嵌入?(2)音乐应用如何从中得益?在我们的分析中,我们显示它们捕捉了坚持音乐理论所描述的重要关系的和弦之间的相似之处。在第一个案例研究中,我们证明在下一个和弦预测任务中使用和弦嵌入可以产生更接近有经验的音乐家的预测。在第二个案例研究中,我们展示了在与音乐定义有关的任务中使用这些表述的潜在好处。