一个使用贝叶斯网络隐藏敏感XML关联规则的PPDM模型

Khalid Iqbal, S. Asghar, S. Fong
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引用次数: 5

摘要

关联规则挖掘(ARM)是为市场购物篮分析而引入的,在这种分析中,每笔交易中经常出现的项目被标识为规则。在这种采矿过程中,规则的敏感性问题十多年来从未得到解决。因此,研究人员应优先关注ARM中敏感保护的研究,以避免敏感信息泄露的风险,特别是在数据源共享的情况下。本文提出了一种基于贝叶斯网络(BN)的基于模型的PPDM模型,该模型可以可靠地隐藏ARM中的敏感规则。这种可靠性在PPDM的XML领域的文献中从未被研究或报道过。PPDM模型的一个有用的优点是它能够解开各种方向,这些方向可以有效地用于克服XML关联规则(XML Association Rules, xar)中的披露风险。此外,众所周知,即使在绝对竞争的环境中,PPDM模式也有利于企业。
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A PPDM model using Bayesian Network for hiding sensitive XML Association Rules
Association Rule Mining (ARM) was introduced for the market basket analysis where items that are frequently appeared together per transaction are identified as rules. In such mining process, sensitivity issue of rules has never been addressed for more than a decade. Thus, research on guarding sensitivity in ARM should be attended to in priority by researchers, so that the risk of sensitive information disclosure can be avoided especially when the data sources are being shared. In this paper, we presented a Mode-based PPDM model via Bayesian Network (BN) which can reliably hide away sensitive rules in ARM. Such reliability was never studied nor reported in the literature of XML domain of PPDM. One useful advantage of PPDM model is its ability to unfasten a variety of directions that could be effectively used to overcome disclosure risk in XML Association Rules (XARs). Moreover, PPDM model is known to benefit businesses even in absolute competitive environment.
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