首页> 外文会议>International Conference on Discovery Science(DS 2005); 20051008-11; Singapore(SG) >A Data Analysis Approach for Evaluating the Behavior of Interestingness Measures
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A Data Analysis Approach for Evaluating the Behavior of Interestingness Measures

机译:一种评估兴趣测度行为的数据分析方法

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In recent years, the problem of finding the different aspects existing in a dataset has attracted many authors in the domain of knowledge quality in KDD. The discovery of knowledge in the form of association rules has become an important research. One of the most difficult issues is that an enormous number of association rules are discovered, so it is not easy to choose the best association rules or knowledge for a given dataset. Some methods are proposed for choosing the best rules with an interestingness measure or matching properties of interesting-ness measure for a given set of interestingness measures. In this paper, we propose a new approach to discover the clusters of interestingness measures existing in a dataset. Our approach is based on the evaluation of the distance computed between interestingness measures. We use two techniques: agglomerative hierarchical clustering (AHC) and partitioning around medoids (PAM) to help the user graphically evaluates the behavior of interestingness measures.
机译:近年来,寻找数据集中存在的不同方面的问题吸引了KDD知识质量领域的许多作者。以关联规则的形式发现知识已经成为一项重要的研究。最困难的问题之一是发现了大量关联规则,因此为给定的数据集选择最佳关联规则或知识并不容易。提出了一些方法来选择带有兴趣度度量的最佳规则或针对给定的一组兴趣度度量匹配兴趣度度量的属性。在本文中,我们提出了一种新的方法来发现数据集中存在的兴趣度度量的聚类。我们的方法基于对趣味性测度之间计算出的距离的评估。我们使用两种技术:聚集层次聚类(AHC)和围绕类固醇分区(PAM)来帮助用户以图形方式评估兴趣度度量的行为。

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