数据均衡的KNN欠采样方法

M. Beckmann, N. Ebecken, B. D. Lima
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引用次数: 81

摘要

在监督学习中,数据集中的类之间的实例数量不平衡会使算法将少数类中的一个实例分类为多数类中的一个实例。为了解决这一问题,KNN算法为其他平衡方法提供了基础。本文对这些平衡方法进行了回顾,提出了一种新的简单的KNN欠采样方法。实验表明,KNN欠采样方法优于其他采样方法。该方法也优于其他研究的结果,表明KNN的简单性可以作为机器学习和知识发现的有效算法的基础。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A KNN Undersampling Approach for Data Balancing
In supervised learning, the imbalanced number of instances among the classes in a dataset can make the algorithms to classify one instance from the minority class as one from the majority class. With the aim to solve this problem, the KNN algorithm provides a basis to other balancing methods. These balancing methods are revisited in this work, and a new and simple approach of KNN undersampling is proposed. The experiments demonstrated that the KNN undersampling method outperformed other sampling methods. The proposed method also outperformed the results of other studies, and indicates that the simplicity of KNN can be used as a base for efficient algorithms in machine learning and knowledge discovery.
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