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On application of artificial immune system to optimize fuzzy regression trees

机译:人工免疫系统在模糊回归树优化中的应用

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This paper presents the application of a novel fuzzy regression trees technique to real-world regression problems. Elgasir algorithm is a fuzzy regression trees technique applied to crisp regression trees in order to overcome the problems of sharp decision boundaries. Fuzzy regression trees are induced by applying Elgasir algorithm to crisp CHAID regression trees based on Trapezoidal membership functions and Takagi-Sugeno fuzzy inference. Elgasir algorithm associated with artificial immune system are used to induce the optimized version of Elgasir algorithm. The Elevators and Compactiv are two real-world datasets from KEEL repository used to perform empirical evaluation for the proposed method. The Elevators dataset has been retrieved from the task of controlling a F16 aircraft. The Compactiv is computer Activity dataset. The empirical results showed show the capability of Elgasir optimized to produce robust fuzzy regression trees.
机译:本文介绍了一种新颖的模糊回归树技术在现实世界中的回归问题的应用。 Elgasir算法是一种模糊回归树技术,应用于清晰的回归树中,以克服决策边界过大的问题。基于梯形隶属度函数和Takagi-Sugeno模糊推理,将Elgasir算法应用于清晰的CHAID回归树,从而得出模糊回归树。与人工免疫系统相关的Elgasir算法用于诱导Elgasir算法的优化版本。 Elevators和Compactiv是KEEL存储库中的两个真实数据集,用于对所提出的方法进行经验评估。电梯数据集已从控制F16飞机的任务中获取。 Compactiv是计算机活动数据集。实验结果表明,优化了Elgasir的能力可以生成鲁棒的模糊回归树。

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