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Models for Music Analysis From a Markov Logic Networks Perspective

机译:马尔可夫逻辑网络视角的音乐分析模型

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Analyzing and formalizing the intricate mechanisms of music is a very challenging goal for Artificial Intelligence. Dealing with real audio recordings requires the ability to handle both uncertainty and complex relational structure at multiple levels of representation. Until now, these two aspects have been generally treated separately, probability being the standard way to represent uncertainty in knowledge, while logical representation being the standard way to represent knowledge and complex relational information. Several approaches attempting a unification of logic and probability have recently been proposed. In particular, Markov logic networks (MLNs), which combine first-order logic and probabilistic graphical models, have attracted increasing attention in recent years in many domains. This paper introduces MLNs as a highly flexible and expressive formalism for the analysis of music that encompasses most of the commonly used probabilistic and logic-based models. We first review and discuss existing approaches for music analysis. We then introduce MLNs in the context of music signal processing by providing a deep understanding of how they specifically relate to traditional models, specifically hidden Markov models and conditional random fields. We then present a detailed application of MLNs for tonal harmony music analysis that illustrates the potential of this framework for music processing.
机译:对音乐的复杂机制进行分析和形式化是人工智能的一个非常具有挑战性的目标。处理真实的录音需要具有在多个表示级别上处理不确定性和复杂关系结构的能力。到现在为止,这两个方面已被普遍分开对待,概率是表示知识不确定性的标准方法,而逻辑表示是表示知识和复杂关系信息的标准方法。最近已经提出了几种尝试统一逻辑和概率的方法。特别是,结合了一阶逻辑和概率图形模型的马尔可夫逻辑网络(MLN)近年来在许多领域引起了越来越多的关注。本文介绍了MLN,它是一种高度灵活且富有表现力的形式主义,用于音乐分析,其中包含大多数常用的概率模型和基于逻辑的模型。我们首先回顾和讨论音乐分析的现有方法。然后,我们通过深入了解MLN与传统模型(特别是隐马尔可夫模型和条件随机场)的关系,在音乐信号处理的背景下介绍MLN。然后,我们介绍MLN在音调和声音乐分析中的详细应用,从而说明该框架在音乐处理中的潜力。

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