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Mining frequent pattern with Attribute Oriented Induction High Level Emerging Pattern (AOI-HEP)

机译:使用面向属性的归纳高级新兴模式(AOI-HEP)挖掘频繁模式

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This paper is extended version from previous paper which proposed AOI-HEP as novel data mining technique. This paper will explain how AOI-HEP mining technique can be used to mine frequent pattern. AOI-HEP is influenced by Attribute Oriented Induction (AOI) and Emerging Pattern (EP) mining techniques by applying AOI characteristic rule algorithm and improvement EP growth rate. The experiment used adult dataset from UCI machine learning repository with 48842 instances, run in 3 seconds and the instances were discriminated between government and non government concepts based on learning on workclass attribute. AOI-HEP mining interest for frequent pattern will be influenced by learning on their chosen attribute. The experiments showed that adult dataset which learn on workclass attribute had AOI-HEP mining interest for frequent pattern and there are four frequent patterns which have strong discrimination rule. Meanwhile, extended experiments upon adult dataset which learn on marital-status attribute showed there is no AOI-HEP mining interest for frequent pattern.
机译:本文是先前论文的扩展版本,该论文提出了AOI-HEP作为一种新颖的数据挖掘技术。本文将解释如何使用AOI-HEP挖掘技术来挖掘频繁模式。 AOI-HEP通过应用AOI特征规则算法和提高EP增长率,受到面向属性的归纳(AOI)和新兴模式(EP)挖掘技术的影响。该实验使用了来自UCI机器学习存储库的成人数据集,包含48842个实例,在3秒钟内运行,并且根据对工作类属性的学习,将实例区分了政府概念和非政府概念。对AOI-HEP挖掘频繁模式的兴趣将受到对其选择属性的学习的影响。实验表明,在工作类别属性上学习的成人数据集对AOI-HEP的频繁模式有挖掘兴趣,并且有四种具有强烈判别规则的频繁模式。同时,对成人数据集进行扩展实验后,他们了解了婚姻状况属性,发现对频繁模式的兴趣不在于AOI-HEP挖掘。

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