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GF-Miner: a Genetic Fuzzy Classifier for Numerical Data

机译:GF-Miner:用于数值数据的基因模糊分类器

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Fuzzy logic and genetic algorithms are well-established computational techniques that have been employed to deal with the problem of classification as this is presented in the context of data mining. Based on Fuzzy Miner which is a recently proposed state-of-the-art fuzzy rule based system for numerical data, in this paper we propose GF-Miner which is a genetic fuzzy classifier that improves Fuzzy Miner firstly by adopting a clustering method for succeeding a more natural fuzzy partitioning of the input space, and secondly by optimizing the resulting fuzzy if-then rules with the use of genetic algorithms. More specifically, the membership functions of the fuzzy partitioning are extracted in an unsupervised way by using the fuzzy c- means clustering algorithm, while the extracted rules are optimized in terms of the volume of the rulebase and the size of each rule, using two appropriately designed genetic algorithms. The efficiency of our approach is demonstrated through an extensive experimental evaluation using the IRIS benchmark dataset.
机译:模糊逻辑和遗传算法是已熟悉的计算技术,这些技术已被用于处理分类问题,因为这在数据挖掘的背景下呈现。基于模糊矿工,这是最近提出的基于最先进的模糊规则的数字数据系统,本文提出了GF-Miner,这是一个遗传模糊分类器,它首先通过采用群集方法来改善模糊矿工。通过使用遗传算法优化所产生的模糊IF-DOT规则,更自然的模糊划分。更具体地,通过使用模糊的C型聚类算法以无监督的方式提取模糊分区的隶属函数,而提取的规则在规则库的体积和每个规则的尺寸方面进行了优化,使用两个适当的规则设计的遗传算法。通过使用虹膜基准数据集进行广泛的实验评估,证明了我们方法的效率。

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