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On the Combination of Pairwise and Granularity Learning for Improving Fuzzy Rule-Based Classification Systems: GL-FARCHD-OVO

机译:关于改进基于模糊规则的分类系统的成对和粒度学习的组合:GL-FARCHD-OVO

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Fuzzy rule-based systems constitute a wide spread tool for classification problems, but several proposals may decrease its performance when dealing with multi-class problems. Among existing approaches, the FARC-HD algorithm has excelled as it has shown to achieve accurate and compact classifiers, even in the context of multi-class problems. In this work, we aim to go one step further to improve the behavior of the former algorithm by means of a "divide-and-conquer"approach, viabinarization in a one-versus-one scheme. Besides, we will contextualize each binary classifier by adapting the database for each subproblem by means of a granularity learning process to adapt the number of fuzzy labels per variable. Our experimental study, using several datasets from KEEL dataset repository, shows the goodness of the proposed methodology.
机译:基于模糊的规则的系统构成了一个广泛的分类问题,但在处理多级问题时,若干提案可能会降低其性能。在现有方法中,即使在多级问题的背景下,Farc-HD算法也表现出准确和紧凑的分类器。在这项工作中,我们的目标是通过一种“分行和征服”方法,在一个与单个方案中的一体化,通过“分次和征服”方法,进一步逐步提高前算法的行为。此外,我们将通过粒度学习过程调整每个子问题的数据库来构思每个二进制分类器,以调整每个变量的模糊标签的数量。我们的实验研究,使用来自Keel DataSet储存库的多个数据集,显示了所提出的方法的良好。

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