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Genetic Cooperative-Competitive Fuzzy Rule Based Learning Method using Genetic Programming for Highly Imbalanced Data-Sets

机译:基于遗传合作竞争的模糊规则基于遗传编程对高度不平衡数据集的基于学习方法

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Classification in imbalanced domains is an important problem in Data Mining. We refer to imbalanced classification when data presents many examples from one class and few from the other class, and the less representative class is the one which has more interest from the point of view of the learning task. The aim of this work is to study the behaviour of the GP-COACH algorithm in the scenario of data-sets with high imbalance, analysing both the performance and the interpretability of the obtained fuzzy models. To develop the experimental study we will compare this approach with a well-known fuzzy rule learning algorithm, the Chi et al.'s method, and an algorithm of reference in the field of imbalanced data-sets, the C4.5 decision tree.
机译:在不平衡域中的分类是数据挖掘中的一个重要问题。 当数据呈现许多来自另一类类的示例时,我们指的是不平衡分类,并且较少的代表性类是从学习任务的角度来看具有更多兴趣的类。 这项工作的目的是研究GP-Coach算法在具有高不平衡的数据集的情况下的行为,分析了所获得的模糊模型的性能和可解释性。 为了开发实验研究,我们将通过众所周知的模糊规则学习算法,Chi等人,C4.5决策树,C4.5决策树的方法和参考算法将这种方法与CHI等。

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