(Re)discovering Laws of Music Theory Using Information Lattice Learning

Haizi Yu, L. Varshney, Heinrich Taube, James A. Evans
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引用次数: 1

Abstract

Information lattice learning (ILL) is a novel framework for knowledge discovery based on group-theoretic and information-theoretic foundations, which can rediscover the rules of music as known in the canon of music theory and also discover new rules that have remained unexamined. Such probabilistic rules are further demonstrated to be human-interpretable. ILL itself is a rediscovery and generalization of Shannon’s lattice theory of information, where probability measures are not given but are learned from training data. This article explains the basics of the ILL framework, including both how to construct a lattice-structured abstraction universe that specifies the structural possibilities of rules, and how to find the most informative rules by performing statistical learning through an iterative student–teacher algorithmic architecture that optimizes information functionals. The ILL framework is finally shown to support both pedagogy and novel patterns of music co-creativity.
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(二)利用信息点阵学习发现音乐理论规律
信息晶格学习(Information lattice learning, ILL)是一种基于群论和信息论基础的知识发现新框架,它可以重新发现音乐理论经典中已知的音乐规则,也可以发现尚未被研究的新规则。这种概率规则被进一步证明是人类可解释的。ILL本身是对Shannon的格信息理论的重新发现和推广,其中概率度量不是给定的,而是从训练数据中学习的。本文解释了ILL框架的基础知识,包括如何构建指定规则结构可能性的格状结构抽象域,以及如何通过优化信息功能的迭代学生-教师算法架构执行统计学习来找到信息量最大的规则。最后,研究表明,ILL框架既支持音乐共同创造的教学法,也支持音乐共同创造的新模式。
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