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首页> 外文期刊>International journal of computational intelligence systems >Genetic lateral tuning for subgroup discovery with fuzzy rules using the algorithm NMEEF-SD
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Genetic lateral tuning for subgroup discovery with fuzzy rules using the algorithm NMEEF-SD

机译:使用NMEEF-SD算法利用模糊规则对子群发现进行遗传侧向调整

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摘要

The main objective of subgroup discovery is to discover interesting and interpretable patterns with respect to a specific property. The use of evolutionary fuzzy systems provides good algorithms to approach this problem. In this sense, NMEEF-SD algorithm -one of the most representative evolutionary fuzzy systems for subgroup discovery- obtains precise and interpretable subgroups. However in the majority of the evolutionary fuzzy systems, the membership functions of the linguistic labels are usually fixed to static values and the partitions are not adapted to the context of each variable. In this paper, a post-processing tuning step to improve the results of the subgroup discovery algorithm NMEEF-SD is proposed, allowing the partitions to be adapted to the context the variables. The application of this tuning step is a novelty in subgroup discovery and consist of a genetic algorithm which allows the lateral displacement of the membership functions of a label considering a unique parameter, using the 2-tuples linguistic representation. The results obtained using different data sets of the KEEL repository show the improvement in the performance of the NMEEF-SD algorithm with lateral displacement. The study is supported by statistical tests to improve the analysis performed.
机译:小组发现的主要目的是发现关于特定属性的有趣且可解释的模式。进化模糊系统的使用为解决这个问题提供了很好的算法。从这个意义上说,NMEEF-SD算法(用于子组发现的最具代表性的进化模糊系统之一)可获取精确且可解释的子组。但是,在大多数进化模糊系统中,语言标签的隶属函数通常固定为静态值,并且分区不适合每个变量的上下文。在本文中,提出了一个后处理调整步骤,以改善子组发现算法NMEEF-SD的结果,从而使分区能够适应上下文变量。该调整步骤的应用在子组发现中是一个新颖的事物,它包括一个遗传算法,该遗传算法允许使用2元组语言表示法考虑唯一参数的标签隶属函数的横向移位。使用KEEL储存库的不同数据集获得的结果表明,具有侧向位移的NMEEF-SD算法的性能有所提高。该研究得到统计测试的支持,以改善所进行的分析。

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