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A Short Study on the Use of Genetic 2-Tuples Tuning for Fuzzy Rule Based Classification Systems in Imbalanced Data-Sets

机译:基于模糊规则的基于模糊规则的分类系统的遗传2元组使用的简短研究

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In this work our aim is to increase the performance of Fuzzy Rule Based Classifications Systems in the framework of imbalanced data-sets by means of the application of a genetic tuning step. We focus on the imbalanced data-set problem since it appears in many real application areas and, for this reason, it has become a relevant topic in the area of machine learning. This problem occurs when the number of examples that represents one of the concepts of interest (usually the most important) is much lower than that of the remaining ones. We want to adapt the 2-tuples based genetic tuning approach to classification problems and to study the positive synergy between this method and the Chi et al.'s fuzzy learning method, which is a basic approach in order to build the initial Knowledge Base. The experimental results show the improvement achieved by the 2-tuples based genetic tuning over the Fuzzy Rule Based Classification System in all types of imbalanced data, obtaining a better behaviour than the basic approach.
机译:在这项工作中,我们的目标是通过应用遗传调整步骤来提高基于模糊规则基于分类系统的框架的性能。我们专注于不平衡的数据集问题,因为它出现在许多实际应用领域,因此,它已成为机器学习领域的相关主题。当表示感兴趣概念之一的示例数(通常是最重要的)的示例的数量远低于其余的示例的数量。我们希望将基于组元组的基于遗传调整方法调整到分类问题,并研究这种方法与Chi等人的积极协同作用。的模糊学习方法,是一种基本方法,以构建初始知识库。实验结果表明,在所有类型的不平衡数据中基于模糊规则的分类系统的基于组对基础的遗传调整所实现的改进,比基本方法更好的行为。

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