不平衡数据的混合采样

Chris Seiffert, T. Khoshgoftaar, J. V. Hulse
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引用次数: 74

摘要

存在不平衡数据的决策树学习是一个具有重要实际意义的问题,因为这种数据在各种应用领域中无处不在。我们提出了混合数据采样,它结合了随机过采样和随机欠采样两种采样技术,以创建一个平衡的数据集,用于构建决策树分类模型。结果表明,我们的方法通常能够提高C4.5决策树学习器在不平衡数据背景下的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hybrid sampling for imbalanced data
Decision tree learning in the presence of imbalanced data is an issue of great practical importance, as such data is ubiquitous in a wide variety of application domains. We propose hybrid data sampling, which uses a combination of two sampling techniques such as random oversampling and random undersampling, to create a balanced dataset for use in the construction of decision tree classification models. The results demonstrate that our methodology is often able to improve the performance of a C4.5 decision tree learner in the context of imbalanced data.
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