面向属性的感应高层次新兴模式(AOI-HEP)未来研究

Spits Warnars
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引用次数: 12

摘要

面向属性归纳高级新兴模式(AOI- hep)是一种新型的数据挖掘技术,它结合了面向属性归纳和新兴模式两种数据挖掘技术。AOI-HEP应用程序是AOI特征规则挖掘和HEP算法的混合体。AOI- hep结合AOI和EP的强大特性,利用AOI中的概念层次将其推广到高层次数据,并在EP中应用增长率,对高层次数据产生强大的判别能力。AOI-HEP可以用于区分数据集,例如为银行贷款系统或信用卡申请人找到坏客户和好客户等。同时,可以实现AOI-HEP来挖掘相似的模式,如相似的客户贷款模式或相似的客户信用卡评级等。由于AOI-HEP是一种新的数据挖掘技术,因此可以在逆向发现学习、学习两个以上数据集、学习其他知识规则等方面进行进一步的研究。AOI-HEP的未来研究将为数据挖掘研究者特别是本科生和硕士生提供研究思路。事实上,AOI-HEP作为新兴的数据挖掘技术将在发现过程中完成,具有丰富的有趣模式,成为有趣的挖掘技术。
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Attribute Oriented Induction High Level Emerging Pattern (AOI-HEP) future research
Attribute Oriented Induction High level Emerging Pattern (AOI-HEP) as a new data mining technique, combines two data mining techniques i.e. Attribute Oriented Induction (AOI) and Emerging Patterns (EP). The AOI-HEP application is implemented as a hybrid between AOI characteristic rule mining and HEP algorithms. AOI-HEP combines the powerful features of AOI and EP by using concept hierarchy in AOI to generalize into high level data and applying growth rates in EP and produces powerful discrimination for high level data. AOI-HEP can be implemented to discriminate datasets such as finding bad and good customers for banking loan systems or credit card applicants and etc. Meanwhile, AOI-HEP can be implemented to mine similar patterns such as similar customer loan patterns or similar customer credit card rating and etc. Since AOI-HEP is a new data mining technique, then future research can be explored such as inverse discovery learning, learning more than two datasets, learning other knowledge rules and etc. AOI-HEP future research will give research idea for data mining researchers community particularly for bachelor and master degree students. Indeed, AOI-HEP as new comer data mining technique will be completed in discovery process, having rich interesting patterns and become interested mining technique.
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