CORE:基于核的合成少数过采样和边缘多数欠采样技术。

Pub Date : 2015-01-01 DOI:10.1504/ijdmb.2015.068952
Chumphol Bunkhumpornpat, Krung Sinapiromsaran
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引用次数: 8

摘要

在这个领域中,从分类的目的来看,一个罕见的类是主要感兴趣的类。不幸的是,传统的机器学习算法无法检测到这类,因为巨大的多数类压倒了极小的少数类。在本文中,我们提出了一种叫做CORE的新技术来处理类不平衡问题。CORE的目标是加强少数类的核心,并削弱少数类在多数类边缘附近被错误分类的风险。这些核心和边界区域由安全水平的适用性来定义。其结果是,少数阶级更加拥挤和占主导地位。实验表明,当少数类的数据不平衡时,CORE可以显著提高其预测性能。
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CORE: core-based synthetic minority over-sampling and borderline majority under-sampling technique.

Class imbalance learning has recently drawn considerable attention among researchers. In this area, a rare class is the class of primary interest from the aim of classification. Unfortunately, traditional machine learning algorithms fail to detect this class because a huge majority class overwhelms a tiny minority class. In this paper, we propose a new technique called CORE to handle the class imbalance problem. The objective of CORE is to strengthen the core of a minority class and weaken the risk of misclassified minority instances nearby the borderline of a majority class. These core and borderline regions are defined by the applicability of a safe level. As a result, a minority class is more crowed and dominant. The experiment shows that CORE can significantly improve the predictive performance of a minority class when its dataset is imbalance.

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