Adaptation Proposed Methods for Handling Imbalanced Datasets based on Over-Sampling Technique

Liqaa M. Shoohi, J. H. Saud
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Abstract

Classification of imbalanced data is an important issue. Many algorithms have been developed for classification, such as Back Propagation (BP) neural networks, decision tree, Bayesian networks etc., and have been used repeatedly in many fields. These algorithms speak of the problem of imbalanced data, where there are situations that belong to more classes than others. Imbalanced data result in poor performance and bias to a class without other classes. In this paper, we proposed three techniques based on the Over-Sampling (O.S.) technique for processing imbalanced dataset and redistributing it and converting it into balanced dataset. These techniques are (Improved Synthetic Minority Over-Sampling Technique (Improved SMOTE),  Borderline-SMOTE + Imbalanced Ratio(IR), Adaptive Synthetic Sampling (ADASYN) +IR) Algorithm, where the work these techniques are generate the synthetic samples for the minority class to achieve balance between minority and majority classes and then calculate the IR between classes of minority and majority. Experimental results show ImprovedSMOTE algorithm outperform the Borderline-SMOTE + IR and ADASYN + IR algorithms because it achieves a high balance between minority and majority classes.
基于过采样技术的不平衡数据集处理方法
不平衡数据的分类是一个重要的问题。许多分类算法已经被开发出来,如BP神经网络、决策树、贝叶斯网络等,并在许多领域得到了反复的应用。这些算法谈到了数据不平衡的问题,即存在属于更多类的情况。不平衡的数据导致性能不佳,并且对没有其他类的类有偏见。本文提出了基于过采样(oversampling, O.S.)技术的三种处理不平衡数据集的技术,并将其重新分布并转换为平衡数据集。这些技术是(改进的合成少数过度采样技术(改进SMOTE),边界-SMOTE +不平衡比率(IR),自适应合成采样(ADASYN) +IR)算法,其中这些技术的工作是为少数类生成合成样本,以实现少数和多数类之间的平衡,然后计算少数和多数类之间的IR。实验结果表明,改进的smote算法实现了少数类和多数类之间的高度平衡,优于Borderline-SMOTE + IR和ADASYN + IR算法。
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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