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A methodology to generate compact and accurate fuzzy knowledge bases based on fuzzy clustering and evolutionary selection and tuning

机译:基于模糊聚类和进化选择与调整的紧凑而准确的模糊知识库的生成方法

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A new methodology to learn descriptive linguistic Fuzzy Rule-based System Knowledge Bases from examples based on the combination of fuzzy clustering and evolutionary simultaneous rule selection and membership functions tuning is presented in this work. Fuzzy clustering is used to achieve a preliminary description of the data, in other words to obtain information on the definition of the linguistic terms and rules instead of predefined linguistic terms and rules that use them. The evolutionary algorithm obtains the final compact and accurate knowledge base selecting a subset of rules with high level of cooperation and fine-tuning the linguistic terms involved. The results obtained with this proposal improves accuracy as well as complexity through the number of rules compared with a classic algorithm and a reference algorithm both well known in the literature, as the experimental study developed shows, using several different data sets.
机译:提出了一种基于模糊聚类与进化同时规则选择和隶属函数调整相结合的实例学习基于描述性语言的基于模糊规则的系统知识库的新方法。模糊聚类用于获得数据的初步描述,换句话说就是获取有关语言术语和规则的定义的信息,而不是获得使用它们的预定义语言术语和规则的信息。进化算法获得最终的紧凑而准确的知识库,该知识库选择具有高度合作性的规则子集并微调涉及的语言术语。与经典文献和文献中众所周知的参考算法相比,通过该提案获得的结果通过规则数量提高了准确性和复杂性,如实验研究显示的那样,使用了多个不同的数据集。

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