作者
Jianjun Zhang, Ting Wang, Wing WY Ng, Shuai Zhang, Chris D Nugent
发表日期
2019/7/7
研讨会论文
2019 International conference on machine learning and cybernetics (ICMLC)
页码范围
1-8
出版商
IEEE
简介
Undersampling the dataset to rebalance the class distribution is effective to handle class imbalance problems. However, randomly removing majority examples via a uniform distribution may lead to unnecessary information loss. This would result in performance deterioration of classifiers trained using this rebalanced dataset. On the other hand, examples have different sensitivities with respect to class imbalance. Higher sensitivity means that this example is more easily to be affected by class imbalance, which can be used to guide the selection of examples to rebalance the class distribution and to boost the classifier performance. Therefore, in this paper, we propose a novel undersampling method, the UnderSampling using Sensitivity (USS), based on sensitivity of each majority example. Examples with low sensitivities are noisy or safe examples while examples with high sensitivities are borderline examples. In …
引用总数
2020202120222023202445642
学术搜索中的文章
J Zhang, T Wang, WWY Ng, S Zhang, CD Nugent - 2019 International conference on machine learning …, 2019