DAG:一种保护隐私数据挖掘的通用模型(扩展摘要)

Sin G. Teo, Jianneng Cao, V. Lee
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引用次数: 2

摘要

安全多方计算(SMC)允许各方根据其输入共同计算一个函数,同时对每个输入保密。SMC被广泛应用于具有隐私要求的任务中,如隐私保护数据挖掘(PPDM),在学习任务输出的同时保护输入数据的隐私。然而,现有的基于smc的解决方案是特别的——它们是为特定的应用程序提出的,因此不能直接应用于其他应用程序。为了解决这个问题,我们提出了一个隐私模型DAG(有向无环图),它由一组基本安全算子(例如,+,−,x, /和power)组成。我们的模型是通用的——它的操作符,如果流水线在一起,可以实现各种功能,甚至复杂的功能。实验结果也表明,我们的DAG模型可以在可接受的时间内运行。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
DAG: A General Model for Privacy-Preserving Data Mining : (Extended Abstract)
Secure multi-party computation (SMC) allows parties to jointly compute a function over their inputs, while keeping every input confidential. SMC has been extensively applied in tasks with privacy requirements, such as privacy-preserving data mining (PPDM), to learn task output and at the same time protect input data privacy. However, existing SMC-based solutions are ad-hoc – they are proposed for specific applications, and thus cannot be applied to other applications directly. To address this issue, we propose a privacy model DAG (Directed Acyclic Graph) that consists of a set of fundamental secure operators (e.g., +, −, ×, /, and power). Our model is general – its operators, if pipelined together, can implement various functions, even complicated ones. The experimental results also show that our DAG model can run in acceptable time.
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