Feature selection for binary classification based on class labeling, SOM, and hierarchical clustering

Zhao Zhengtian, Rui Zhiyuan, Duan Xiaoyan
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Abstract

Feature selection plays an important role in algorithms for processing high-dimensional data. Traditional pattern classification and information theory methods are widely applied to feature selection methods. However, traditional pattern classification methods such as Fisher Score, Laplacian Score, and relief use class labels inadequately. Previous information theory based feature selection methods such as MIFS ignore the intra-class to tight inter-class to sparse property of the samples. To address these problems, a feature selection algorithm for the binary classification problem is proposed, which is based on class label transformation using self-organizing mapping neural network (SOM) and cohesive hierarchical clustering. The algorithm first converts class labels without numerical meaning into numerical values that can participate in operations and retain classification information through class label mapping, and constitutes a two-dimensional vector from it and the attribute values to be judged. Then, these two-dimensional vectors are clustered by using SOM neural network and hierarchical clustering. Finally, evaluation function value is calculated, that is closely related to intra-cluster to tightness, inter-cluster separation, and division accuracy after clustering, and is used to evaluate the ability of alternative attributes to distinguish between classes. It is experimentally verified that the algorithm is robust and can effectively screen attributes with strong classification ability and improve the prediction performance of the classifier.
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基于类标注、SOM和层次聚类的二值分类特征选择
特征选择在高维数据处理算法中起着重要的作用。传统的模式分类方法和信息论方法被广泛应用于特征选择方法中。然而,传统的模式分类方法如Fisher Score、Laplacian Score和relief没有充分地使用类标签。以往基于信息论的特征选择方法,如MIFS,忽略了样本的类内、类间、稀疏性。为了解决这些问题,提出了一种基于自组织映射神经网络(SOM)和内聚层次聚类的类标签变换的二分类问题特征选择算法。该算法首先通过类标签映射将没有数字含义的类标签转换为能够参与操作并保留分类信息的数值,并以此与待判断的属性值构成二维向量。然后,利用SOM神经网络和分层聚类对这些二维向量进行聚类。最后,计算评价函数值,该值与聚类后的簇内紧密度、簇间分离度和划分精度密切相关,用于评价备选属性区分类的能力。实验验证了该算法的鲁棒性,能够有效筛选分类能力较强的属性,提高分类器的预测性能。
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