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首页> 外文期刊>Advanced engineering informatics >MICF: An effective sanitization algorithm for hiding sensitive patterns on data mining
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MICF: An effective sanitization algorithm for hiding sensitive patterns on data mining

机译:MICF:一种有效的清理算法,用于隐藏数据挖掘中的敏感模式

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摘要

Data mining mechanisms have widely been applied in various businesses and manufacturing companies across many industry sectors. Sharing data or sharing mined rules has become a trend among business partnerships, as it is perceived to be a mutually benefit way of increasing productivity for all parties involved. Nevertheless, this has also increased the risk of unexpected information leaks when releasing data. To conceal restrictive itemsets (patterns) contained in the source database, a sanitization process transforms the source database into a released database that the counterpart cannot extract sensitive rules from. The transformed result also conceals non-restrictive information as an unwanted event, called a side effect or the "misses cost". The problem of finding an optimal sanitization method, which conceals all restrictive itemsets but minimizes the misses cost, is NP-hard. To address this challenging problem, this study proposes the maximum item conflict first (MICF) algorithm. Experimental results demonstrate that the proposed method is effective, has a low sanitization rate, and can generally achieve a significantly lower misses cost than those achieved by the MinFIA, MaxFIA, IGA and Algo2b methods in several real and artificial datasets.
机译:数据挖掘机制已广泛应用于许多行业的各种企业和制造公司。共享数据或共享采矿规则已成为业务合作伙伴关系中的一种趋势,因为这被认为是提高所有参与方生产率的互惠方式。但是,这也增加了发布数据时意外信息泄漏的风险。为了隐藏源数据库中包含的限制性项目集(模式),清理过程会将源数据库转换为发布的数据库,对方无法从中提取敏感规则。转换后的结果还将非限制性信息隐藏为一种不良事件,称为副作用或“损失成本”。寻找一种最佳的消毒方法可以解决NP问题,该方法可以隐藏所有限制性物品集,但可以最大程度地降低错过成本。为了解决这个具有挑战性的问题,本研究提出了最大项目冲突优先(MICF)算法。实验结果表明,与MinFIA,MaxFIA,IGA和Algo2b方法在几个真实数据集和人工数据集中获得的方法相比,该方法有效,清除率低并且通常可以显着降低误判成本。

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