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Learning Efficient Rulesets from Fuzzy Data with a Genetic Algorithm

机译:利用遗传算法从模糊数据中学习高效规则集

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The aim of this paper is to demonstrate the feasibility of fuzzy measures of subsethood in learning from examples. Using the relationship between (fuzzy) set containment and (fuzzy) logical implication, a method of generating if-then rules that describe a fuzzy dataset is given. In order to obtain an efficient subset of the generated rules, we apply a simple genetic algorithm. The proposed method is illustrated with a fuzzified well-known learning set. The results on this set clearly improve other approaches.
机译:本文的目的是证明在从实例中学习子集模糊测度的可行性。利用(模糊)集合包含与(模糊)逻辑含义之间的关系,给出了一种生成描述模糊数据集的if-then规则的方法。为了获得所生成规则的有效子集,我们应用了一种简单的遗传算法。用模糊的众所周知的学习集说明了所提出的方法。此设置的结果明显改善了其他方法。

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