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Learning Concurrently Partition Granularities and Rule Bases of Mamdani Fuzzy Systems in a Multi-Objective Evolutionary Framework

机译:在多目标进化框架中同时学习Mamdani模糊系统的分区粒度和规则库

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摘要

In this paper we propose a multi-objective evolutionary algorithm to generate Mamdani fuzzy rule-based systems with different good trade-offs between complexity and accuracy. The main novelty of the algorithm is that both rule base and granularity of the uniform partitions defined on the input and output variables are learned concurrently. To this aim, we introduce the concepts of virtual and concrete rule bases: the former is defined on linguistic variables, all partitioned with a fixed maximum number of fuzzy sets, while the latter takes into account, for each variable, a number of fuzzy sets as determined by the specific partition granularity of that variable. We exploit a chromosome composed of two parts, which codify the variables partition granularities, and the virtual rule base, respectively. Genetic operators manage virtual rule bases, whereas fitness evaluation relies on an appropriate mapping strategy between virtual and concrete rule bases. The algorithm has been tested on two real-world regression problems showing very promising results.
机译:在本文中,我们提出了一种多目标进化算法来生成基于Mamdani模糊规则的系统,该系统在复杂性和准确性之间具有良好的折衷。该算法的主要新颖之处在于,可以同时学习在输入和输出变量上定义的统一分区的规则库和粒度。为此,我们介绍了虚拟规则库和具体规则库的概念:前者是根据语言变量定义的,所有语言变量均以固定的最大模糊集数量进行划分,而后者针对每个变量考虑了许多模糊集由该变量的特定分区粒度确定。我们利用由两部分组成的染色体分别编码变量分区粒度和虚拟规则库。遗传算子管理虚拟规则库,而适应性评估则依赖于虚拟规则库与具体规则库之间的适当映射策略。该算法已经在两个真实的回归问题上进行了测试,结果显示了非常有希望的结果。

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