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Machine learning system for estimating the rhythmic salience of sounds

机译:机器学习系统,用于估计声音的节奏显着性

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This article describes experimental work carried out in attempt to improve the effectiveness of musical rhythm retrieval systems. The authors define basic notions in the area of hierarchical rhythm retrieval and describe a procedure for inducing rhythmic hypotheses in a given melody. Utilizing an approach commonly used in the data mining domain, an association rule model has been applied to estimate the rhythmic salience of sounds based on the physical attributes of duration, frequency and amplitude. On the basis of the knowledge obtained by the machine learning system, the authors propose five functions to rank sounds according to their tendency to be located in accented positions in a melody. Adapted precision and recall measures were used to validate the proposed functions and conduct experimental verification. Conclusions derived from the results of the experiments have also been presented.
机译:本文介绍了为提高音乐节奏检索系统的有效性而进行的实验工作。作者定义了分层节奏检索领域的基本概念,并描述了在给定旋律中导出节奏假设的过程。利用数据挖掘领域中常用的一种方法,已将关联规则模型应用于基于持续时间,频率和振幅的物理属性来估计声音的节奏显着性。在机器学习系统获得的知识的基础上,作者提出了五种功能,可以根据声音在旋律中位于重音位置的趋势来对声音进行排名。改编的精度和召回措施用于验证建议的功能并进行实验验证。还提出了从实验结果得出的结论。

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