通过分类器聚合处理不平衡类

M. Molinara, M. Ricamato, F. Tortorella
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引用次数: 41

摘要

现实世界中的两类分类问题往往以类不平衡为特征。这是一个严重的问题,因为在这样的数据分布上训练的分类器通常显示出高度偏向大多数类的预测精度。为了提高分类器的质量,目前已经提出了许多方法来构建人工平衡的训练集。这些方法主要基于对多数类的欠采样和/或对少数类的过采样。然而,这两种方法都会对训练好的分类器产生过拟合或欠拟合问题。在本文中,我们提出了一种构建多分类器系统的方法,其中每个构成分类器在多数类的一个子集和整个少数类上进行训练。该方法已在数字乳房x线照片上的微钙化检测上进行了测试。实验结果证实了该方法的有效性。
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Facing Imbalanced Classes through Aggregation of Classifiers
Two class classification problems in real world are often characterized by imbalanced classes. This is a serious issue since a classifier trained on such a data distribution typically exhibits a prediction accuracy highly skewed towards the majority class. To improve the quality of the classifier, many approaches have been proposed till now for building artificially balanced training sets. Such methods are mainly based on undersampling the majority class and/or oversampling the minority class. However, both approaches can produce overfitting or underfitting problems for the trained classifier. In this paper we present a method for building a multiple classifier system in which each constituting classifier is trained on a subset of the majority class and on the whole minority class. The approach has been tested on the detection of microcalcifications on digital mammograms. The results obtained confirm the effectiveness of the method.
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