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IFROWANN: Imbalanced Fuzzy-Rough Ordered Weighted Average Nearest Neighbor Classification

机译:IFROWANN:不平衡模糊粗糙有序加权平均最近邻分类

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摘要

Imbalanced classification deals with learning from data with a disproportional number of samples in its classes. Traditional classifiers exhibit poor behavior when facing this kind of data because they do not take into account the imbalanced class distribution. Four main kinds of solutions exist to solve this problem: modifying the data distribution, modifying the learning algorithm for considering the imbalance representation, including the use of costs for data samples, and ensemble methods. In this paper, we adopt the second type of solution and introduce a classification algorithm for imbalanced data that uses fuzzy rough set theory and ordered weighted average aggregation. The proposal considers different strategies to build a weight vector to take into account data imbalance. Our methods are validated by an extensive experimental study, showing statistically better results than 13 other state-of-the-art methods.
机译:不平衡分类处理的是从其类中样本数量不成比例的数据中学习。传统分类器在面对此类数据时表现出不良行为,因为它们未考虑不均衡的类分布。解决此问题的方法主要有四种:修改数据分布,修改用于考虑不平衡表示的学习算法,包括使用数据样本成本以及集成方法。在本文中,我们采用第二种解决方案,并介绍了一种基于模糊粗糙集理论和有序加权平均聚合的不平衡数据分类算法。该提案考虑了建立权重向量的不同策略,以考虑数据不平衡。我们的方法已通过广泛的实验研究验证,显示出比13种其他最新技术更好的统计结果。

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