Oversampling Algorithm Based on Spatial Distribution of Data Sets for Imbalance Learning

Yiran Liu, Wanjiang Han, Xiaoxiang Wang, Qi Li
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引用次数: 2

Abstract

Imbalance problem is widespread in machine learning. Most learning algorithms can’t get satisfied performance when they are applied on imbalance data sets, because they can be deteriorated by this problem easily. This paper proposed SDSMOTE method which captures the spatial distribution of imbalance data sets, and changes the tendency of learning algorithm by over sampling by oversampling according to the recognition difficulty. Experiments on 5 UCI data sets validate the effectiveness of this oversampling algorithm.
不平衡学习中基于数据集空间分布的过采样算法
不平衡问题是机器学习中普遍存在的问题。大多数学习算法在应用于不平衡数据集时都不能得到满意的性能,因为它们很容易被这个问题恶化。本文提出了SDSMOTE方法,该方法捕捉不平衡数据集的空间分布,并根据识别难度通过过采样改变学习算法的倾向。在5个UCI数据集上的实验验证了该过采样算法的有效性。
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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