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Association Rule Hiding for Privacy Preserving Data Mining

机译:隐藏隐私保护数据挖掘的关联规则隐藏

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Privacy preservation is a big challenge in data mining. The protection of sensitive information becomes a critical issue when releasing data to outside parties. Association rule mining could be very useful in such situations. It could be used to identify all the possible ways by which 'non-confidential' data can reveal 'confidential' data, which is commonly known as 'inference problem'. This issue is solved using Association Rule Hiding (ARH) techniques in Privacy Preserving Data Mining (PPDM). Association rule hiding aims to conceal these association rules so that no sensitive information can be mined from the database. This paper proposes a model for hiding sensitive association rules. The model is implemented with a Fast Hiding Sensitive Association Rule (FHSAR) algorithm using the java eclipse framework. The implemented algorithm is integrated with a Weka open source data mining tool. Model analysis and evaluation shows its efficiency by balancing the trade-off between utility and privacy preservation in data mining with minimal side effects.
机译:隐私保护是数据挖掘中的一大挑战。将数据发布给外部方时,保护敏感信息成为一个关键问题。在这种情况下,关联规则挖掘可能非常有用。它可以用来识别“非机密”数据可以揭示“机密”数据的所有可能方式,这通常被称为“推理问题”。使用隐私保护数据挖掘(PPDM)中的关联规则隐藏(ARH)技术解决了此问题。关联规则隐藏旨在隐藏这些关联规则,以便无法从数据库中挖掘敏感信息。本文提出了一种隐藏敏感关联规则的模型。该模型是使用java eclipse框架通过快速隐藏敏感关联规则(FHSAR)算法实现的。实现的算法与Weka开源数据挖掘工具集成在一起。模型分析和评估通过平衡数据挖掘中效用和隐私保护之间的权衡以最小的副作用来显示其效率。

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