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Rough Sets for Handling Imbalanced Data: Combining Filtering and Rule-based Classifiers

机译:处理不平衡数据的粗糙集:结合过滤和基于规则的分类器

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The paper addresses problems of improving performance of rule-based classifiers constructed from imbalanced data sets, i.e., data sets where the minority class of primary importance is under-represented in comparison to majority classes. We introduced two techniques to detect and process inconsistent examples from the majority classes in the boundary between the minority and majority classes. Both these techniques differ in the way of processing inconsistent boundary examples from the majority classes. The first approach removes them, while the other relabels them as belonging to the minority class. The experiments showed that the best results were obtained for the filtering technique, where inconsistent majority class examples were reassigned to the minority class, combined with a classifier composed of decision rules generated by the MODLEM algorithm.
机译:该文件解决了提高基于规则的分类器性能的问题,该分类器是由不平衡的数据集(即,与大多数类别相比,主要重要性的少数类别的代表不足)构成的数据集。我们引入了两种技术来检测和处理少数派和多数派之间的边界中来自多数派的不一致示例。这两种技术在处理来自多数类的不一致边界示例的方式上有所不同。第一种方法将其删除,而另一种方法将其重新标记为属于少数群体。实验表明,对于滤波技术,将不一致的多数类示例重新分配给少数类,并结合由MODLEM算法生成的决策规则组成的分类器,可获得最佳结果。

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