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Editing Training Sets from Imbalanced Data Using Fuzzy-Rough Sets

机译:使用模糊粗糙集从不平衡数据中编辑训练集

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In this research, we study several instance selection methods based on rough set theory and propose an approach able to deal with inconsistency caused by noise and imbalanced data. Recent attention has focused on the significant results obtained in selecting instances from noisy data using fuzzy-rough sets. For imbalanced data, fuzzy-rough sets approach is also applied before and after using balancing methods in order to improve classification performance. In this study, we propose an approach that uses different criteria for minority and majority classes in fuzzy-rough instance selection. It thus eliminates the step of using balancing techniques employed in controversial approach. We also carry out some experiments, measure classification performance and make comparisons with other methods.
机译:在这项研究中,我们研究了基于粗糙集理论的几种实例选择方法,并提出了一种能够解决由噪声和数据不平衡引起的不一致的方法。最近的注意力集中在使用模糊粗糙集从噪声数据中选择实例中获得的重要结果。对于不平衡的数据,在使用平衡方法之前和之后还应用了模糊粗糙集方法,以提高分类性能。在这项研究中,我们提出了一种在模糊粗糙实例选择中对少数和多数类别使用不同标准的方法。因此,它消除了使用有争议方法中使用的平衡技术的步骤。我们还进行了一些实验,测量分类性能并与其他方法进行比较。

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