内容:一个新的规则生成器分类器

Javad Basiri, F. Taghiyareh, Sahar Gazani
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引用次数: 8

摘要

基于规则的分类器已经成功地应用于数据挖掘领域。在本文中,我们提出了一种新的规则生成分类器,称为CORER (Colonial competitive rule -based classifier),以提高数据分类的准确性。该分类器基于最近发展的进化优化算法CCA(殖民竞争算法)。为了验证不同领域的CORER能力,应用了来自UCI机器学习数据库存储库的四个不同数据集。为了评估CORER的性能,我们将我们的结果与其他一些知名的分类方法,如C4.5, CN.2, ID3和naïve bayes进行了比较,结果更优。我们的研究结果使我们相信,CORER可以为一些需要更精确分类器的批评领域提供更好的性能。
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CORER: A New Rule Generator Classifier
Rule-based classifiers have been successfully applied in data mining applications. In this Paper, we have proposed a novel rule generator classifier called CORER (Colonial competitive Rule-based classifier) to improve the accuracy of data classification. The proposed classifier works based on CCA (Colonial Competitive Algorithm), a recently-developed evolutionary optimization algorithm. In order to approve the CORER capability in various domains, four different datasets from UCI machine learning database repository have been applied. To evaluate CORER performance, we compared our results with some other well-known classification methods, such as C4.5, CN.2, ID3 and naïve bayes which brings about superior results. Our findings lead us to believe that CORER may provide better performance for some critic domains which need more precise classifiers.
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