Clustering-Based Prototype Generation for Imbalance Classification

Huajuan Ren, Bei Yang
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引用次数: 4

Abstract

Class imbalance classification has become a crucial problem in machine learning. Under-sampling is a widely adopted technique to address imbalance classification, which mainly depends on either randomly or heuristically resampling on the majority class samples. These sample-based under-sampling methods ignore part of the majority class information during the training. In this paper, we propose a clustering-based prototype generation technique to generate representative the majority and minority class instances with relatively balance ratio, which reduces the imbalanced ratio and the overlap of boundary samples, so as to facilitate classification tasks. We evaluate this algorithm on 8 imbalanced datasets, showing that the proposed method outperforms the other three under-sampling approaches.
基于聚类的不平衡分类原型生成
类不平衡分类已成为机器学习中的关键问题。欠采样是一种广泛采用的解决不平衡分类的技术,它主要依赖于随机或启发式地对大多数类样本进行重采样。这些基于样本的欠采样方法在训练过程中忽略了大部分类信息的一部分。本文提出了一种基于聚类的原型生成技术,生成具有代表性且比例相对平衡的多数类和少数类实例,减少了边界样本的不平衡比例和重叠,从而便于分类任务。我们在8个不平衡数据集上对该算法进行了评估,结果表明该方法优于其他三种欠采样方法。
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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