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Enhanced hierarchical fuzzy model using evolutionary GA with modified ABC algorithm for classification problem

机译:改进GA的改进层次模糊模型与改进ABC算法的分类问题。

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This paper enhances the hierarchical fuzzy model to deal with the classification problems by adopting evolutionary genetic algorithm (GA) with a modified artificial bee colony (ABC) algorithm. Traditionally, fuzzy classifier could not provide a sufficiently high classification rate in higher feature dimension with few rules. In the literature, the genetic algorithm can take advantage from the global searching; moreover, the characteristic of ABC can enhance the local searching. Therefore, the hierarchical fuzzy model integrates GA with a modified ABC algorithm is constructed in this study to recognize some classification problems. The classification simulation includes three benchmark databases such as Glass, Wine, and Iris database. The result demonstrates that using evolutionary GA and modified ABC algorithm is beneficial than that without turning. Therefore, it is clearly that our methodology considers not only the global exploration but also the local exploitation.
机译:通过采用进化遗传算法(GA)和改进的人工蜂群(ABC)算法,增强了用于处理分类问题的层次模糊模型。传统上,模糊分类器无法在规则少的情况下以较高的特征维数提供足够高的分类率。在文献中,遗传算法可以从全局搜索中获得优势。而且,ABC的特性可以增强本地搜索。因此,本研究构建了将遗传算法与改进的ABC算法集成的分层模糊模型,以识别一些分类问题。分类模拟包括三个基准数据库,例如Glass,Wine和Iris数据库。结果表明,使用进化遗传算法和改进的ABC算法比不使用转向算法更有利。因此,很明显,我们的方法不仅考虑了全球勘探,还考虑了本地开采。

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