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Privacy-Preserving Association Rule Mining Using Binary TLBO for Data Sharing in Retail Business Collaboration

机译:隐私保留关联规则挖掘使用二进制TLBO进行零售业务协作中的数据共享

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摘要

Sharing of data provides mutual benefits for collaborating organizations. Data mining techniques have allowed regimented discovery of knowledge from huge databases. Conversely, in the case of sharing the data with others, knowledge discovery raises the possibility of revealing the sensitive knowledge. The need of privacy prompted the growth of numerous privacy-preserving data mining techniques. In order to deal with privacy concerns, the database is to be transformed into another database in such a way that the sensitive knowledge is concealed. One subarea of privacy-preserving data mining, which got attention in retail businesses, is privacy-preserving association rule mining. A significant feature of privacy-preserving association rule mining is attaining a balance between privacy and precision, which is characteristically conflicting, and refining the one generally reduces the other one. In this paper, the problem has been planned in the perspective of protecting association rules which are sensitive by prudently amending the transactions of the database. To moderate the loss of non-sensitive association rules and to improve the quality of the transformed database, the proposed approach competently estimates the impact of an alteration to the database. The proposed method selects the transactions for alterations using the binary TLBO optimization technique during the concealing process. Experimental outcomes exhibit the efficiency of the proposed algorithm.
机译:分享数据为协作组织提供相互福利。数据挖掘技术允许从庞大的数据库中获得受试者的知识。相反,在与他人共享数据的情况下,知识发现提出了揭示敏感知识的可能性。隐私的需要促使众多隐私保留数据挖掘技术的增长。为了处理隐私问题,数据库将以敏感知识隐藏的方式转换为另一个数据库。隐私保留数据挖掘的一个子区域,在零售业务中受到关注,是保留隐私保留关联规则挖掘。隐私保留关联规则挖掘的一个重要特征是占据隐私和精度之间的平衡,它是特征性冲突,并炼油通常会减少另一个。在本文中,在保护关联规则的角度下计划了通过审慎修改数据库的交易来说敏感的问题。为了缓解非敏感关联规则的丢失并提高转换数据库的质量,所提出的方法能够竞争更改对数据库的影响。所提出的方法选择在隐藏过程中使用二进制TLBO优化技术进行更改的交易。实验结果表明了所提出的算法的效率。

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