Learning Imbalanced Multi-class Data with Optimal Dichotomy Weights

Xu-Ying Liu, Qian-Qian Li, Zhi-Hua Zhou
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引用次数: 49

Abstract

Class-imbalance is very common in real data mining tasks. Previous studies focused on binary-class imbalance problem, whereas multi-class imbalance problem is more challenging. Error correcting output codes (ECOC) technique can be applied to class-imbalance problem, however, the standard ECOC aims at maximizing accuracy, ignoring the fact that, when class-imbalance is really a problem, the minority classes are more important than the majority classes. To enable ECOC to tackle multi-class imbalance, it is desired to have an appropriate code matrix, an effective learning strategy and a decoding strategy emphasizing the minority classes. In this paper, based on the aforementioned consideration, we propose the imECOC method which works on dichotomies to handle both the between-class imbalance and within-class imbalance. As the dichotomy classifiers contribute differently to the final prediction, imECOC assigns weights to dichotomies and uses weighted distance for decoding, where the optimal dichotomy weights are obtained by minimizing a weighted loss in favor of the minority classes. Experimental results on fourteen data sets show that, imECOC performs significantly better than many state-of-the-art multi-class imbalance learning methods, no matter whether multi-class F1, G-mean or AUC are used as evaluation measures.
类不平衡在实际数据挖掘任务中非常常见。以往的研究主要集中在二元失衡问题上,而多类失衡问题更具挑战性。错误纠正输出码(ECOC)技术可以应用于类不平衡问题,但是,标准ECOC的目的是最大化准确性,忽略了这样一个事实,即当类不平衡确实是一个问题时,少数类比多数类更重要。为了使ECOC能够解决多班级失衡问题,需要有适当的编码矩阵、有效的学习策略和以少数班级为重点的解码策略。基于上述考虑,本文提出了利用二分类方法处理类间不平衡和类内不平衡的imECOC方法。由于二分类器对最终预测的贡献不同,imECOC为二分类分配权重,并使用加权距离进行解码,其中通过最小化有利于少数类的加权损失来获得最佳二分类权重。在14个数据集上的实验结果表明,无论以多类F1、G-mean还是AUC作为评价指标,imECOC的学习效果都明显优于许多最先进的多类失衡学习方法。
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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