无线传感器网络中外包两方隐私保护K-Means聚类协议

Xiaoyan Liu, Z. L. Jiang, S. Yiu, Xuan Wang, Chuting Tan, Ye Li, Zechao Liu, Yabin Jin, Jun-bin Fang
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引用次数: 20

摘要

目前,无线传感器网络广泛应用于以人为中心的应用和环境监测中。不同的机构部署自己的无线传感器网络进行数据收集和处理。当研究机构合作进行数据挖掘,同时又希望保持双方的数据隐私时,这成为一个具有挑战性的问题。隐私保护数据挖掘(PPDM)可以解决上述问题,它使拥有机密数据的多方在其组合数据上运行数据挖掘算法,而不会向彼此泄露任何不必要的信息。然而,由于收集的数据量巨大,数据挖掘算法复杂,将大部分计算外包给云计算是可取的。在本文中,我们考虑这样一种场景:计算能力较弱的双方需要共同运行一个k-means聚类协议,同时将协议的大部分计算外包给云。因此,每一方都可以使用双方的数据计算出正确的结果,而将大部分计算外包给云。在隐私方面,一方拥有的数据对另一方和云都是保密的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Outsourcing Two-Party Privacy Preserving K-Means Clustering Protocol in Wireless Sensor Networks
Nowadays wireless sensor network (WSN) is widely used in human-centric applications and environmental monitoring. Different institutes deploy their own WSNs for data collection and processing. It becomes a challenging problem when institutes collaborate to do data mining while intend to keep data privacy on each side. Privacy preserving data mining (PPDM) is used to solve the above problem, which enables multiple parties owning confidential data to run a data mining algorithm on their combined data, without revealing any unnecessary information to each other. However, due to the huge amount of data collected and the complexity of data mining algorithms, it is preferable to outsource most of the computations to the cloud. In this paper, we consider a scenario in which two parties with weak computational power need jointly run a k-means clustering protocol, at the same time outsource most of the computation of the protocol to the cloud. As a result, each party can have the correct result calculated by the data from both parties with most of the computation outsourced to the cloud. As for privacy, the data owned by one party should be kept confidential from both the other party and the cloud.
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