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Learning cooperative linguistic fuzzy rules using the best-worst ant system algorithm

机译:使用最差蚂蚁系统算法学习合作语言模糊规则

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Within the field of linguistic fuzzy modeling with fuzzy rule-based systems, the automatic derivation of the linguistic fuzzy rules from numerical data is an important task. In the last few years, a large number of contributions based on techniques such as neural networks and genetic algorithms have been proposed to face this problem. In this article, we introduce a novel approach to the fuzzy rule learning problem with ant colony optimization (ACO) algorithms. To do so, this learning task is formulated as a combinatorial optimization problem. Our learning process is based on the COR methodology proposed in previous works, which provides a search space that allows us to obtain fuzzy models with a good interpretability-accuracy trade-off. A specific ACO-based algorithm, the Best-Worst Ant System, is used for this purpose due to the good performance shown when solving other optimization problems. We analyze the behavior of the proposed method and compare it to other learning methods and search techniques when solving two real-world applications. The obtained results lead us to remark the good performance of our proposal in terms of interpretability, accuracy, and efficiency. (c) 2005 Wiley Periodicals, Inc.
机译:在基于模糊规则的系统的语言模糊建模领域中,从数值数据自动导出语言模糊规则是一项重要的任务。在过去的几年中,已经提出了基于诸如神经网络和遗传算法之类的技术的大量贡献来解决这个问题。在本文中,我们介绍一种采用蚁群优化(ACO)算法解决模糊规则学习问题的新方法。为此,将此学习任务表述为组合优化问题。我们的学习过程基于先前工作中提出的COR方法,它提供了一个搜索空间,使我们能够获得具有良好解释性-准确性折衷的模糊模型。由于解决其他优化问题时表现出良好的性能,因此使用了一种基于ACO的特定算法,即最差蚂蚁系统。我们分析提出的方法的行为,并在解决两个实际应用时将其与其他学习方法和搜索技术进行比较。获得的结果使我们在可解释性,准确性和效率方面评价了我们提案的良好性能。 (c)2005年Wiley Periodicals,Inc.

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