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On Addressing Efficiency Concerns in Privacy-Preserving Mining

机译:解决隐私保护采矿中的效率问题

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摘要

Data mining services require accurate input data for their results to be meaningful, but privacy concerns may influence users to provide spurious information. To encourage users to provide correct inputs, we recently proposed a data distortion scheme for association rule mining that simultaneously provides both privacy to the user and accuracy in the mining results. However, mining the distorted database can be orders of magnitude more time-consuming as compared to mining the original database. In this paper, we address this issue and demonstrate that by (a) generalizing the distortion process to perform symbol-specific distortion, (b) appropriately chooosing the distortion parameters, and (c) applying a variety of optimizations in the reconstruction process, runtime efficiencies that are well within an order of magnitude of undistorted mining can be achieved.
机译:数据挖掘服务需要准确的输入数据才能使结果有意义,但是隐私问题可能会影响用户提供虚假信息。为了鼓励用户提供正确的输入,我们最近提出了一种用于关联规则挖掘的数据失真方案,该方案可同时为用户提供隐私和挖掘结果的准确性。但是,与挖掘原始数据库相比,挖掘失真的数据库可能会花费更多的时间。在本文中,我们解决了这个问题,并证明了这一点:通过(a)概括失真过程以执行特定于符号的失真;(b)适当选择失真参数;以及(c)在重构过程,运行时中应用各种优化效率可以达到不变形采矿的一个数量级。

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