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Rough and Soft Set Approaches for Attributes Selection of Traditional Malay Musical Instrument Sounds Classification

机译:传统马来乐器声音分类属性选择的粗糙集和软集方法

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摘要

Feature selection or attribute reduction is performed mainly to avoid the 'curse of dimensionality 'in the large database problem including musical instrument sound classification. This problem deals with the irrelevant and redundant features. Rough set theory and soft set theory proposed by Pawlak and Molodtsov, respectively, are mathematical tools for dealing with the uncertain and imprecision data. Rough and soft set-based dimensionality reduction can be considered as machine learning approaches for feature selection. In this paper, the authors applied these approaches for data cleansing and feature selection technique of Traditional Malay musical instrument sound classification. The data cleansing technique is developed based on matrices computation of multi-soft sets while feature selection using maximum attributes dependency based on rough set theory. The modeling process comprises eight phases: data acquisition, sound editing, data representation, feature extraction, data discretization, data cleansing, feature selection, and feature validation via classification. The results show that the highest classification accuracy of 99.82% was achieved from the best 17 features with 1-NN classifier.
机译:进行特征选择或属性缩减主要是为了避免在大型数据库问题(包括乐器声音分类)中出现“维数诅咒”。此问题涉及不相关和多余的功能。 Pawlak和Molodtsov分别提出的粗糙集理论和软集理论是处理不确定和不精确数据的数学工具。基于粗糙集和软集的降维可以被视为特征选择的机器学习方法。在本文中,作者将这些方法应用于传统马来乐器声音分类的数据清洗和特征选择技术。数据清理技术是基于多软集的矩阵计算而开发的,同时基于粗糙集理论使用最大属性依赖来选择特征。建模过程包括八个阶段:数据采集,声音编辑,数据表示,特征提取,数据离散化,数据清理,特征选择以及通过分类进行特征验证。结果表明,使用1-NN分类器从最佳的17个特征中获得了最高的分类精度,为99.82%。

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