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Rule base and adaptive fuzzy operators cooperative learning of Mamdani fuzzy systems with multi-objective genetic algorithms

机译:基于多目标遗传算法的Mamdani模糊系统规则库与自适应模糊算子协同学习

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摘要

In this paper, we present an evolutionary multi-objective learning model achieving cooperation between the rule base and the adaptive fuzzy operators of the inference system in order to obtain simpler, more compact and still accurate linguistic fuzzy models by learning fuzzy inference adaptive operators together with rules. The multi-objective evolutionary algorithm proposed generates a set of fuzzy rule based systems with different trade-offs between interpretability and accuracy, allowing the designers to select the one that involves the most suitable balance for the desired application. We develop an experimental study testing our approach with some variants on nine real-world regression datasets finding the advantages of cooperative compared to sequential models, as well as multi-objective compared with single-objective models. The study is elaborated comparing different approaches by applying non-parametric statistical tests for pair-wise. Results confirm the usefulness of the proposed approach.
机译:在本文中,我们提出了一种进化的多目标学习模型,该模型实现了规则库与推理系统的自适应模糊算子之间的协作,以便通过学习模糊推理自适应算子以及与之一起获得更简单,更紧凑且仍然准确的语言模糊模型。规则。提出的多目标进化算法生成了一组基于模糊规则的系统,这些系统在可解释性和准确性之间具有不同的折衷,从而使设计人员可以选择最适合所需应用平衡的系统。我们进行了一项实验研究,在9个真实世界的回归数据集上对我们的方法进行了测试,发现了与顺序模型相比协作的优势以及与单目标模型相比多目标的优势。通过对成对应用非参数统计检验,详细研究了比较不同方法。结果证实了该方法的有效性。

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