审计系统关联规则

Linshan Shen, Shaobin Huang, Xiangke Mao, Junjun Fan, Jianghua Li
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引用次数: 0

摘要

本文将数据挖掘中的关联规则应用到审计系统中,以挖掘审计数据的特征。作为一种新的挖掘技术,审计师可以使用这种方法来更好地解释大量的审计数据。基于关联规则的算法是发现数据集之间隐藏的关联关系的一种优秀方法。它适用于难以启动的海量数据的挖掘。由于审计数据通常包含大量具有不同分布特征的稀有数据,因此我们提出了一种基于多支持的稀有数据挖掘框架。我们采用全置信度方法来处理跨平台支持。本文提出了基于广义关联规则的MSAC_Apriori算法,该算法有助于在定量关联分析中建立关联关系。在实际数据集上的实验结果表明,该方法通过减少频繁项的数量而不遗漏罕见项,从而提高了性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Association Rules for Auditing Systems
In this paper, we apply the association rules in data mining to an auditing system in order to mine the characteristics of audit data. The approach as a new mining technology can be used by an auditor to better interpret vast amounts of audit data. Association rules based algorithm is an outstanding methodology with which people can discover the hidden correlation relationships among dataset. It is applicable to mining of huge data which were difficult to start with. Because audit data usually contain a large number of rare data with different distribution characteristics, we hereby propose a multiple supports-based framework for digging data pattern from the rare data. We use all-confidence method to deal with crossing platform supports. In this paper we propose the MSAC_Apriori algorithm with generalized association rules, which helps establish the relationships during quantitative association analysis. Experimental results on practical datasets show that the proposed approach improves the performance by decreasing the number of frequent items without missing rare items.
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