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Medical Association Rule Mining Using Genetic Network Programming

机译:基于遗传网络编程的医学协会规则挖掘

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An efficient algorithm for building a classifier is proposed based on an important association rule mining using genetic network programming (GNP). The proposed method measures the significance of the association via the chi-squared test. Users can define the conditions of important association rules for building a classifier flexibly. The definition can include not only the minimum threshold chi-squared value, but also the number of attributes in the association rules. Therefore, all the extracted important rules can be used for classification directly. GNP is one of the evolutionary optimization techniques, which uses the directed graph structure as genes. Instead of generating a large number of candidate rules, our method can obtain a sufficient number of important association rules for classification. In addition, our method suits association rule mining from dense databases such as medical datasets, where many frequently occurring items are found in each tuple. In this paper, we describe an algorithm for classification using important association rules extracted by GNP with acquisition mechanisms and present some experimental results of medical datasets.
机译:提出了一种基于重要关联规则挖掘的遗传网络编程(GNP)的高效分类器构建算法。所提出的方法通过卡方检验测量关联的显着性。用户可以定义重要关联规则的条件,以便灵活地构建分类器。该定义不仅可以包括最小阈值卡方值,而且可以包括关联规则中的属性数量。因此,所有提取的重要规则都可以直接用于分类。 GNP是进化优化技术之一,它使用有向图结构作为基因。我们的方法无需生成大量的候选规则,而是可以获得足够数量的重要关联规则用于分类。此外,我们的方法适合从密集数据库(例如医学数据集)中进行关联规则挖掘,在每个数据库中都可以找到许多频繁出现的项目。在本文中,我们描述了一种使用GNP提取的重要关联规则与获取机制进行分类的算法,并介绍了医学数据集的一些实验结果。

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