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Learning and Generating Folk Melodies Using MPF-Inspired Hierarchical Self-Organising Maps

机译:使用MPF启发等级自组织地图学习和产生民间旋律

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One of the elements in human music creativity results from certain features in the brain that allows it to make predictions of events based on information learnt from past music experiences. Inspired by the Memory Prediction Framework (MPF) theory, we propose a method to learn and generate new melodies based on the MPF concept. We first show how an MPF-inspired Hierarchical Self Organizing Map (MPF-HSOM) is used to capture these important features of the brain in the perspective of MPF. This MPF-HSOM is then trained with a selection of melodies taken from a corpus of folk melodies. We then show that by using a prediction algorithm, we are able to generate new melodies based on the trained MPF-HSOM of old melodies. The system proposed here is an abstraction of the features of the brain according to MPF. The results indicate that the system is able to learn and to produce novel melodies of reasonable quality.
机译:人类音乐创造力中的一个元素来自大脑中的某些特征,允许它根据从过去的音乐体验中学到的信息来预测事件。灵感来自内存预测框架(MPF)理论,我们提出了一种基于MPF概念学习和生成新旋律的方法。我们首先展示了MPF启发的分层自组织地图(MPF-HSOM)如何用于在MPF的角度下捕获大脑的这些重要特征。然后,这种MPF-HSOM培训,选择了从民间旋律语料库中取出的旋律选择。然后,我们表明,通过使用预测算法,我们能够基于培训的旧旋律的MPF-HSOM产生新的旋律。这里提出的系统根据MPF是大脑特征的抽象。结果表明,该系统能够学习并生产合理质量的新旋律。

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