利用反向导航方法实现动态关联规则挖掘

S. Huria, Jaiteg Singh
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引用次数: 3

摘要

关联规则挖掘(ARM)是数据挖掘和机器学习领域中最常用的技术之一。使用关联规则挖掘或规则学习,根据训练数据集实体之间的关联提取隐藏模式。该技术被不同的研究人员和学者应用于大量的数据集上,随着领域和数据集的频繁增加,这一领域仍处于研究阶段。关联规则学习是在庞大的数据库中寻找变量间有趣关系的一种主流和普遍的研究方法。提出了利用不同的兴趣度度量来区分数据库中发现的实体规则。Rakesh Agrawal等人基于实体规则(solid rules)的思想,提出了关联规则,用于在市场中通过提供目的(POS)框架记录的大规模交换信息中发现物品之间的规律。数据集可以作为促进练习选择的前提,例如,有限时间估计或项目位置。尽管上面有来自业务箱调查的说明,关联规则目前在许多应用领域都得到了应用,包括Web利用挖掘、中断识别、连续生成和生物信息学。本文强调并实现了一种使用反向导航的关联规则挖掘的新方法,并在唯一数据集上实现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Implementation of Dynamic Association Rule Mining Using Back Navigation Approach
ARM (Association Rule Mining), one of the most frequently used technique in the domain of data mining and machine learning. Using association rule mining or rule learning extracts the hidden patterns in terms of the association between entities of the training data set. This technique is applied on number of data sets by different researchers and academicians, still this area is under research as the domain and data sets increase very frequently. Association rule learning is a mainstream and generally inquired about system for finding intriguing relations between variables in expansive databases. It is proposed to distinguish solid rules found in databases utilizing distinctive measures of interestingness. Based on the idea of solid rules, Rakesh Agrawal et al. presented association rules for finding regularities between items in expansive scale exchange information recorded by purpose of-offer (POS) frameworks in markets. The data set can be utilized as the premise for choices about promoting exercises, for example, e.g., limited time estimating or item positions. Notwithstanding the above illustration from business crate investigation association rules are utilized today in numerous application regions including Web utilization mining, interruption recognition, Continuous generation, and bioinformatics. This manuscript highlight and implements a novel approach for association rule mining using back navigation and is implemented on the unique dataset.
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