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Subtractive Clustering and Particle Swarm Optimization Based Fuzzy Classifier

机译:基于减法的聚类和粒子群优化的模糊分类器

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Setting a compact and accurate rule base constitutes the principal objective in designing fuzzy rule-based classifiers. In this regard, the authors propose a designing scheme based on the combination of the subtractive clustering (SC) and the particle swarm optimization (PSO). The main idea relies on the application of the SC on each class separately and with a different radius in order to generate regions that are more accurate, and to represent each region by a fuzzy rule. However, the number of rules is then affected by the radiuses, which are the main preset parameters of the SC. The PSO is therefore used to define the optimal radiuses. To get good compromise accuracy-compactness, the authors propose using a multi-objective function for the PSO. The performances of the proposed method are tested on well-known data sets and compared with several state-of-the-art methods.
机译:设置紧凑且准确的规则基础构成了设计模糊规则的分类器的主要目标。 在这方面,作者提出了一种基于减数聚类(SC)和粒子群优化(PSO)的组合的设计方案。 主要思想依赖于单独且具有不同半径的每个类对每个类的应用,以便产生更准确的区域,并通过模糊规则表示每个区域。 但是,规则的数量然后受到半径的影响,这是SC的主要预设参数。 因此,PSO用于定义最佳半径。 为了获得良好的妥协精度紧凑,作者提出了使用PSO的多目标函数。 所提出的方法的性能在众所周知的数据集上测试并与若干最先进的方法进行比较。

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