A Meta-Learning Method to Select Under-Sampling Algorithms for Imbalanced Data Sets

Romero F. A. B. de Morais, P. Miranda, Ricardo Martins
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引用次数: 6

Abstract

Imbalanced data sets originating from real world problems, such as medical diagnosis, can be found pervasive. Learning from imbalanced data sets poses its own challenges, as common classifiers assume a balanced distribution of examples' classes in the data. Sampling techniques overcome the imbalance in the data by modifying the examples' classes distribution. Unfortunately, selecting a sampling technique together with its parameters is still an open problem. Current solutions include the brute-force approach (try as many techniques as possible), and the random search approach (choose the most appropriate from a random subset of techniques). In this work, we propose a new method to select sampling techniques for imbalanced data sets. It uses Meta-Learning and works by recommending a technique for an imbalanced data set based on solutions to previous problems. Our experimentation compared the proposed method against the brute-force approach, all techniques with their default parameters, and the random search approach. The results of our experimentation show that the proposed method is comparable to the brute-force approach, outperforms the techniques with their default parameters most of the time, and always surpasses the random search approach.
不平衡数据集欠采样选择的元学习方法
源自现实世界问题(如医疗诊断)的不平衡数据集随处可见。从不平衡的数据集中学习也有它自己的挑战,因为普通分类器假设数据中样本类的分布是平衡的。抽样技术通过改变样本的类分布来克服数据的不平衡。不幸的是,选择一种采样技术及其参数仍然是一个悬而未决的问题。目前的解决方案包括蛮力方法(尝试尽可能多的技术)和随机搜索方法(从随机的技术子集中选择最合适的技术)。在这项工作中,我们提出了一种新的方法来选择不平衡数据集的采样技术。它使用元学习,并根据先前问题的解决方案为不平衡数据集推荐一种技术。我们的实验将所提出的方法与暴力方法、所有具有默认参数的技术以及随机搜索方法进行了比较。实验结果表明,该方法可与暴力破解方法相媲美,在大多数情况下优于使用默认参数的方法,并且始终优于随机搜索方法。
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