首页> 外文会议>Australian Joint Conference on Artificial Intelligence; 20041204-06; Cairns(AU) >Using Classification to Evaluate the Output of Confidence-Based Association Rule Mining
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Using Classification to Evaluate the Output of Confidence-Based Association Rule Mining

机译:使用分类评估基于置信度的关联规则挖掘的输出

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摘要

Association rule mining is a data mining technique that reveals interesting relationships in a database. Existing approaches employ different parameters to search for interesting rules. This fact and the large number of rules make it difficult to compare the output of confidence-based association rule miners. This paper explores the use of classification performance as a metric for evaluating their output. Previous work on forming classifiers from association rules has focussed on accurate classification, whereas we concentrate on using the properties of the resulting classifiers as a basis for comparing confidence-based association rule learners. Therefore, we present experimental results on 12 UCI datasets showing that the quality of small rule sets generated by Apriori can be improved by using the predictive Apriori algorithm. We also show that CBA, the standard method for classification using association rules, is generally inferior to standard rule learners concerning both running time and size of rule sets.
机译:关联规则挖掘是一种数据挖掘技术,可揭示数据库中有趣的关系。现有方法采用不同的参数来搜索有趣的规则。这一事实和大量的规则使得很难比较基于信任度的关联规则挖掘者的输出。本文探讨了使用分类性能作为评估其输出的指标。以前根据关联规则形成分类器的工作集中在准确分类上,而我们专注于使用所得分类器的属性作为比较基于置信度的关联规则学习者的基础。因此,我们在12个UCI数据集上给出实验结果,表明通过使用预测性Apriori算法可以提高Apriori生成的小规则集的质量。我们还表明,CBA(使用关联规则进行分类的标准方法)通常在运行时间和规则集大小方面均不如标准规则学习者。

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