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Induction of quantified fuzzy rules with Particle Swarm Optimisation

机译:用粒子群算法归纳量化模糊规则

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The use of fuzzy quantifiers to modify the fuzzy linguistic terms in fuzzy models helps build fuzzy systems in a more natural way, by capturing finer pieces of information embedded in the training data. This paper presents a practical approach for the acquisition of fuzzy production rules with quantifiers, based on a class-dependent simultaneous rule learning strategy where each class is associated with a subset of descriptive rules. It is implemented by particle swam optimisation. The performance of the learned fuzzy rules with and without fuzzy quantifiers is evaluated on various UCI benchmark data sets, in comparison to popular alternative rule based learning classifiers. Experimental results demonstrate that rule bases generated by the proposed approach indeed boost classification performance as compared to those involving no fuzzy quantifiers, with at least competitive performance to the alternative learning classifiers.
机译:使用模糊量子在模糊模型中修改模糊语言术语,帮助以更自然的方式构建模糊系统,通过捕获培训数据中的更精细的信息。本文介绍了采用量化器获取模糊生产规则的实用方法,基于类依赖的同时规则学习策略,其中每个类与描述性规则的子集相关联。它是通过粒子游泳优化实现的。与流行的替代规则的学习分类器相比,在各种UCI基准数据集中评估具有和不具有模糊量子的学习模糊规则的性能。实验结果表明,与涉及模糊量子的人相比,所提出的方法产生的规则基础确实增加了分类性能,这对于替代学习分类器至少具有竞争性能。

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