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Privacy-Preserving Regression Modeling and Attack Analysis in Sensor Network

机译:传感器网络中的隐私回归建模与攻击分析

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With the advancements of sensing technologies, participatory data fusion and analysis have raised more and more attention as it provides a promising way enabling the public benefit from this process. However, it is increasingly becoming a challenging problem about how to construct a statistical model for this kind of particular phenomenon under the premise of protecting the data privacy. In this paper, we present a method to build a linear regression model describing a phenomenon observed in the distributed network. At the same time, the private data of each node is preserved. We propose a data aggregation algorithm to fuse the indispensable data for constructing linear regression equation even though the data is private and scattered in the whole network. We also point out that the aggregate node can not only conduct regression modeling, but can conduct some complex statistical analyses based on the aggregation result as well. In addition, we investigate the ability and the degree of the algorithm to preserve the data privacy. We mainly focus on the ability to protect the aggregation result of a community composed of sensor nodes. The experiment shows that the aggregation result can not be disclosed to people unless all of the sensor nodes in the community collude with each other.
机译:随着传感技术的进步,参与式数据融合和分析越来越受到关注,因为它提供了一个有希望的方式,使公众受益于此过程。然而,在保护数据隐私的前提下,如何构建这种特定现象的统计模型越来越有挑战性问题。在本文中,我们提出了一种构建描述在分布式网络中观察到的现象的线性回归模型的方法。同时,保留每个节点的私有数据。我们提出了一种数据聚合算法,使得熔化用于构造线性回归方程的不可缺少的数据,即使数据是私有的并且在整个网络中分散。我们还指出,聚合节点不仅可以进行回归建模,而且可以根据聚合结果进行一些复杂的统计分析。此外,我们还研究了算法的能力和程度,以保留数据隐私。我们主要专注于保护由传感器节点组成的社区的聚合结果的能力。实验表明,除非社区中的所有传感器节点相互融合,否则不能向人们公开聚集结果。

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