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Target-Based, Privacy Preserving, and Incremental Association Rule Mining

机译:基于目标的隐私保护和增量关联规则挖掘

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摘要

We consider a special case in association rule mining where mining is conducted by a third party over data located at a central location that is updated from several source locations. The data at the central location is at rest while that flowing in through source locations is in motion. We impose some limitations on the source locations, so that the central target location tracks and privatizes changes and a third party mines the data incrementally. Our results show high efficiency, privacy and accuracy of rules for small to moderate updates in large volumes of data. We believe that the framework we develop is therefore applicable and valuable for securely mining big data.
机译:我们考虑关联规则挖掘中的一种特殊情况,其中第三方对位于中心位置的数据进行挖掘,该位置从多个源位置进行了更新。中心位置的数据处于静止状态,而流经源位置的数据处于运动状态。我们对源位置施加了一些限制,以便中央目标位置可以跟踪更改并将其私有化,并且第三方可以增量地挖掘数据。我们的结果表明,对大量数据进行中小型更新的规则具有较高的效率,隐私性和准确性。我们认为,因此,我们开发的框架适用于安全挖掘大数据并具有重要价值。

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