A first study on the noise impact in classes for Fuzzy Rule Based Classification Systems

José A. Sáez, J. Luengo, F. Herrera
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引用次数: 6

Abstract

The presence of noise is common in any real data set and may adversely affect the accuracy, construction time and complexity of the classifiers. Models built by Fuzzy Rule Based Classification Systems are recognised for their interpretability, but traditionally these methods have not considered the presence of noise in the data, so it would be interesting to quantify its effect on them. The aim of this contribution is to study the behavior and robustness of Fuzzy Rule Based Classification Systems in presence of noise. In order to do this, 69 synthetic data sets have been created from 23 data sets from the UCI repository. Different levels of noise have been introduced artificially in the class in order to analyze the FRBCSs when noise is present. The methods of Chi et al. and PDFC have been considered as a case study, analyzing the accuracy of the models created. From the results obtained, it is possible to deduce that Fuzzy Rule Based Classification Systems have a good tolerance to class noise.
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基于模糊规则的分类系统中类别噪声影响的初步研究
噪声的存在在任何真实数据集中都是常见的,并且可能对分类器的准确性、构建时间和复杂性产生不利影响。基于模糊规则的分类系统建立的模型因其可解释性而得到认可,但传统上这些方法没有考虑数据中存在噪声,因此量化噪声对它们的影响将是有趣的。本贡献的目的是研究存在噪声的模糊规则分类系统的行为和鲁棒性。为了做到这一点,从UCI存储库中的23个数据集创建了69个合成数据集。在课堂上人为地引入了不同程度的噪声,以便在噪声存在时分析frbcs。Chi等人和PDFC的方法被视为一个案例研究,分析了所创建模型的准确性。从得到的结果可以推断,基于模糊规则的分类系统对类噪声有很好的容忍度。
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