Eita Nakamura, M. Hamanaka, K. Hirata, Kazuyoshi Yoshii
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引用次数: 19

摘要

本文提出了一种基于调性音乐生成理论(GTTM)的音乐语言建模的概率公式,称为概率GTTM (PGTTM)。GTTM是一个著名的音乐理论,它描述了书面音乐的树状结构,类似于自然语言的短语结构语法。为了开发一个结合GTTM和数据驱动音乐语法归纳的机器学习框架的计算音乐语言模型,我们构建了一个基于概率上下文无关语法的单音音乐生成模型,其中GTTM中提出的时间跨度树对应于解析树。应用自然语言处理技术,提出了基于极大似然估计的监督学习和无监督学习算法,以及基于Gibbs抽样的贝叶斯推理算法。尽管模型在概念上很简单,但我们发现该模型可以自动从数据中获取音乐语法,并像分析器一样精确地再现书面音乐的时间跨度树,而分析器需要精心的手动参数调整。
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Tree-structured probabilistic model of monophonic written music based on the generative theory of tonal music
This paper presents a probabilistic formulation of music language modelling based on the generative theory of tonal music (GTTM) named probabilistic GTTM (PGTTM). GTTM is a well-known music theory that describes the tree structure of written music in analogy with the phrase structure grammar of natural language. To develop a computational music language model incorporating GTTM and a machine-learning framework for data-driven music grammar induction, we construct a generative model of monophonic music based on probabilistic context-free grammar, in which the time-span tree proposed in GTTM corresponds to the parse tree. Applying the techniques of natural language processing, we also derive supervised and unsupervised learning algorithms based on the maximal-likelihood estimation, and a Bayesian inference algorithm based on the Gibbs sampling. Despite the conceptual simplicity of the model, we found that the model automatically acquires music grammar from data and reproduces time-span trees of written music as accurately as an analyser that required elaborate manual parameter tuning.
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