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The pertinent single-attribute-based classifier for small datasets classification

机译:用于小型数据集分类的基于基于单个属性的分类器

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Classifying a dataset using machine learning algorithms can be a big challenge when the target is a small dataset. The OneR classifier can be used for such cases due to its simplicity and efficiency. In this paper, we revealed the power of a single attribute by introducing the pertinent single-attribute-based-heterogeneity-ratio classifier (SAB-HR) that used a pertinent attribute to classify small datasets. The SAB-HR’s used feature selection method, which used the Heterogeneity-Ratio (H-Ratio) measure to identify the most homogeneous attribute among the other attributes in the set. Our empirical results on 12 benchmark datasets from a UCI machine learning repository showed that the SAB-HR classifier significantly outperformed the classical OneR classifier for small datasets. In addition, using the H-Ratio as a feature selection criterion for selecting the single attribute was more effectual than other traditional criteria, such as Information Gain (IG) and Gain Ratio (GR).
机译:使用机器学习算法对数据集进行分类,当目标是小型数据集时,可以是一个很大的挑战。由于其简单性和效率,oner分类器可用于此类情况。在本文中,我们通过引入使用相关属性的相关单个属性的异质性比率分类器(SAB-HR)来揭示单个属性的力量来对小型数据集进行分类。 SAB-HR的使用特征选择方法,它使用异质性 - 比率(H-比率)测量来识别集合中的其他属性中最均匀的属性。我们从UCI机器学习存储库的12个基准数据集上的经验结果表明,SAB-HR分类器显着超越了小型数据集的典型oner分类器。另外,使用H-比率作为用于选择单个属性的特征选择标准比其他传统标准更大,例如信息增益(IG)和增益比(GR)。

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