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Improving Search Ability of Genetic Learning Process for High-Dimensional Fuzzy Classification Problems

机译:提高高维模糊分类问题的遗传学习过程搜索能力

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In this paper, we improve efficiency of the genetic search process for generating fuzzy classification rules from high-dimensional problems by using fitness sharing method. First, we define the similarity level of different fuzzy rules. It represents the structural difference of search space in the genetic population. Next, we use sharing method to balance the fitness of different rules and prevent the search process falling into local regions. Then, we combine the sharing method into a hybrid learning approach (i.e., the hybridization of Michigan and Pittsburgh) to obtain the appropriate combination of different rules. Finally, we examine the search ability of different genetic machine learning approaches on a suite of test problems and some well-known classification problems. Experimental results show that the fitness sharing method has higher search ability and it is able to obtained accurate fuzzy classification rules set.
机译:在本文中,我们使用适应度共享方法提高了遗传搜索过程从高维问题生成模糊分类规则的效率。首先,我们定义不同模糊规则的相似度。它代表了遗传种群中搜索空间的结构差异。接下来,我们使用共享方法来平衡不同规则的适用性,并防止搜索过程陷入本地区域。然后,我们将共享方法合并为混合学习方法(即,密歇根州和匹兹堡的混合),以获取不同规则的适当组合。最后,我们在一组测试问题和一些著名的分类问题上研究了不同遗传机器学习方法的搜索能力。实验结果表明,适应度共享方法具有较高的搜索能力,能够获得准确的模糊分类规则集。

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