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Michigan-style fuzzy GBML with (1+1)-ES generation update and multi-pattern rule generation

机译:具有(1 + 1)-ES生成更新和多模式规则生成的密歇根式模糊GBML

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摘要

A variety of fuzzy genetics-based machine learning algorithms have been proposed in the frameworks of Michigan and Pittsburgh approaches. Since each individual is a single rule, Michigan-style algorithms need much less computation time than Pittsburgh-style algorithms where each individual is a rule set. For the same reason, Michigan-style algorithms cannot directly optimize rule sets. Rule set optimization is indirectly performed by optimizing each rule. In this paper, we propose the use of the (1+1)-ES generation update in Michigan-style algorithms. This is for directly performing rule set optimization without losing their high computational efficiency. We also propose a multi-pattern-based rule generation method to generate a fuzzy rule from multiple patterns in a heuristic manner. We demonstrate high efficiency and high generalization ability of our newly proposed Michigan-style algorithm through computational experiments on 19 data sets with 4-310 attributes and 2-15 classes.
机译:在密歇根州和匹兹堡方法的框架中,已经提出了多种基于模糊遗传学的机器学习算法。由于每个人都是一条规则,因此密歇根式算法比匹兹堡式算法(每个人都是一个规则集)所需的计算时间少得多。出于同样的原因,密歇根式算法无法直接优化规则集。规则集优化是通过优化每个规则间接执行的。在本文中,我们建议在密歇根样式算法中使用(1 + 1)-ES生成更新。这是为了直接执行规则集优化而不会损失其高计算效率。我们还提出了一种基于多模式的规则生成方法,以启发式方式从多个模式生成模糊规则。通过对19个具有4-310属性和2-15类数据集的计算实验,我们证明了我们新提出的密歇根式算法的高效性和高泛化能力。

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