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Dynamic ensemble selection for multi-class imbalanced datasets

机译:多级不平衡数据集的动态集合选择

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摘要

Many real-world classification tasks suffer from the class imbalanced problem, in which some classes are highly underrepresented as compared to other classes. In this paper, we focus on multi-class imbalance problems which are considerably more difficult to address than two-class imbalanced problems. On this account, we develop a novel and effective procedure, called dynamic ensemble selection for multi-class imbalanced datasets (DES-MI), in which the competence of the candidate classifiers are assessed with weighted instances in the neighborhood. The proposed DES-MI consists of two key components: the generation of balanced training datasets and the selection of appropriate classifiers. To do so, we develop a preprocessing procedure to balance the training dataset which relies on random balance. To select the most appropriate classifiers in the scenario of multi-class imbalance problems, we propose a weighting mechanism to highlight the competence of classifiers that are more powerful in classifying examples in the region of underrepresented competence. We develop a thorough experimental study in order to verify the benefits of DES-MI in handling multi-class imbalanced datasets. The obtained results, supported by the proper statistical analysis, indicate that DES-MI is able to improve the classification performance for multi-class imbalanced datasets. (C) 2018 Elsevier Inc. All rights reserved.
机译:许多现实世界分类任务遭受了阶级的不平衡问题,其中一些类与其他类相比具有高度代表性的。在本文中,我们专注于多级不平衡问题,这些问题比两级不平衡问题更难以解决。在此帐户中,我们开发了一种新颖且有效的过程,称为Multi-Class的非平数据集(DES-MI)的动态集合选择,其中候选分类器的能力在附近的加权情况下评估。提议的Des-MI由两个关键组件组成:使用平衡训练数据集的生成以及选择适当的分类器。为此,我们开发了预处理程序,以平衡依赖随机平衡的培训数据集。为了在多级不平衡问题的情况下选择最合适的分类器,我们提出了一种加权机制,以突出大规模在特殊竞争力区域的分类示例中更强大的分类机的能力。我们开发了彻底的实验研究,以验证Des-MI在处理多级不平衡数据集中的好处。通过适当的统计分析支持的所获得的结果表明DES-MI能够提高多级不平衡数据集的分类性能。 (c)2018年Elsevier Inc.保留所有权利。

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