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Evaluating Difficulty of Multi-class Imbalanced Data

机译:评估多类不平衡数据的难度

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Multi-class imbalanced classification is more difficult than its binary counterpart. Besides typical data difficulty factors, one should also consider the complexity of relations among classes. This paper introduces a new method for examining the characteristics of multi-class data. It is based on analyzing the neighbourhood of the minority class examples and on additional information about similarities between classes. The experimental study has shown that this method is able to identify the difficulty of class distribution and that the estimated minority example safe levels are related with prediction errors of standard classifiers.
机译:多类不平衡分类比其二元对应分类更加困难。除了典型的数据难度因素之外,还应该考虑类之间关系的复杂性。本文介绍了一种检查多类数据特征的新方法。它基于分析少数类实例的邻域以及有关类之间相似性的其他信息。实验研究表明,该方法能够识别分类分布的难度,估计的少数样本安全等级与标准分类器的预测误差有关。

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