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Feature Selection for Automatic Classification of Chinese Folk Songs

机译:中国民间歌曲自动分类的功能选择

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The researches on feature selection play a very important role in the area of classification. In this paper, we introduce a heuristic wrapper method: Classification Contribution-Ratio Based Selection (CCRS). Using RBF neural network as a classifier, we did our experiments on a data set of 74 features extracted from 517 Chinese folk songs which come from 10 regions. The results show that Root Mean Square, Spectral Flux and Linear Prediction Coefficient are very effective for the classification of 10 kinds of Chinese folk songs. It works better when the number of features is reduced from 74 to 30 and the classification accuracy is improved from 39.74% (using the total 74 features) to 43.208% (using 30 optimal features). At last, we give an illustration of validity of the algorithm, and a comparison with the Fisher Criterion Method which shows the efficiency of CCRS.
机译:对特征选择的研究在分类领域起着非常重要的作用。在本文中,我们介绍了一种启发式包装方法:基于分类贡献比选择(CCR)。使用RBF神经网络作为分类器,我们在从10个区域提取的74个功能中提取的74个功能的数据进行了实验。结果表明,根均线,光谱通量和线性预测系数对于10种中国民间歌曲的分类非常有效。当特性数量从74到30减少时,它的功能更好,分类精度从39.74%(使用总计74个功能)提高到43.208%(使用30个最佳功能)。最后,我们阐述了算法的有效性,以及与显示CCR效率的Fisher标准方法的比较。

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