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Secure two and multi-party association rule mining

机译:安全的两方和多方关联规则挖掘

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Association rule mining provides useful knowledge from raw data in different applications such as health, insurance, marketing and business systems. However, many real world applications are distributed among two or more parties, each of which wants to keep its sensitive information private, while they collaboratively gaining some knowledge from their data. Therefore, secure and distributed solutions are needed that do not have a central or third party accessing the parties' original data. In this paper, we present a new protocol for privacy-preserving association rule mining to overcome the security flaws in existing solutions, with better performance, when data is vertically partitioned among two or more parties. Two sub-protocols for secure binary dot product and cardinality of set intersection for binary vectors are also designed which are used in the main protocols as building blocks.
机译:关联规则挖掘提供了来自不同应用程序(例如健康,保险,市场营销和业务系统)中原始数据的有用知识。但是,许多现实世界中的应用程序分布在两个或两个以上的参与者之间,每个参与者都希望在保持其敏感信息私有的同时,从他们的数据中共同获取一些知识。因此,需要安全且分布式的解决方案,这些解决方案必须没有中央或第三方来访问各方的原始数据。在本文中,我们提出了一种用于隐私保护的关联规则挖掘的新协议,以克服当在两个或多个参与方之间垂直划分数据时,现有解决方案中的安全漏洞,具有更好的性能。还设计了两个用于安全二进制点积的子协议和用于二进制矢量的集合相交的基数,这些子协议在主要协议中用作构建块。

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