An Under-Sampling Method with Support Vectors in Multi-class Imbalanced Data Classification

Md. Yasir Arafat, S. Hoque, Shuxiang Xu, D. Farid
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引用次数: 9

Abstract

Multi-class imbalanced data classification in supervised learning is one of the most challenging research issues in machine learning for data mining applications. Although several data sampling methods have been introduced by computational intelligence researchers in the past decades for handling imbalanced data, still learning from imbalanced data is a challenging task and played as a significant focused research interest as well. Traditional machine learning algorithms usually biased to the majority class instances whereas ignored the minority class instances. As a result, ignoring minority class instances may affect the prediction accuracy of classifiers. Generally, under-sampling and over-sampling methods are commonly used in single model classifiers or ensemble learning for dealing with imbalanced data. In this paper, we have introduced an under-sampling method with support vectors for classifying imbalanced data. The proposed approach selects the most informative majority class instances based on the support vectors that help to engender decision boundary. We have tested the performance of the proposed method with single classifiers (C4.5 Decision Tree classifier and naïve Bayes classifier) and ensemble classifiers (Random Forest and AdaBoost) on 13 benchmark imbalanced datasets. It is explicitly shown by the experimental result that the proposed method produces high accuracy when classifying both the minority and majority class instances compared to other existing methods.
基于支持向量的欠采样多类不平衡数据分类方法
监督学习中的多类不平衡数据分类是数据挖掘应用中机器学习最具挑战性的研究问题之一。尽管在过去的几十年里,计算智能研究人员已经引入了几种数据采样方法来处理不平衡数据,但从不平衡数据中学习仍然是一项具有挑战性的任务,也是一个重要的研究热点。传统的机器学习算法通常偏向于多数类实例,而忽略少数类实例。因此,忽略少数类实例可能会影响分类器的预测精度。一般来说,欠采样和过采样方法通常用于单模型分类器或集成学习中处理不平衡数据。本文提出了一种基于支持向量的欠采样方法来对不平衡数据进行分类。该方法基于支持向量选择信息量最大的多数类实例,帮助生成决策边界。我们使用单个分类器(C4.5 Decision Tree分类器和naïve Bayes分类器)和集成分类器(Random Forest和AdaBoost)在13个基准不平衡数据集上测试了所提出方法的性能。实验结果表明,与现有方法相比,该方法在分类少数类和多数类实例时均具有较高的准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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