Adaptive Differentially Quantized Subspace Perturbation (ADQSP): A Unified Framework for Privacy-Preserving Distributed Average Consensus

被引:0
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作者
Li, Qiongxiu [1 ]
Gundersen, Jaron Skovsted [2 ]
Lopuhaa-Zwakenberg, Milan [3 ]
Heusdens, Richard [4 ,5 ]
机构
[1] Tsinghua University, Department of Computer Science, Beijing,100190, China
[2] Aalborg University, Department of Electronic Systems, Aalborg,9220, Denmark
[3] University of Twente, Department of Mathematics and Computer Science, Enschede,7522 NB, Netherlands
[4] Netherlands Defence Academy (NLDA), Den Helder,1781 AC, Netherlands
[5] Delft University of Technology, Faculty of Electrical Engineering, Mathematics and Computer Science, Delft,2628 CD, Netherlands
关键词
Perturbation techniques - Privacy-preserving techniques - Signal processing;
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摘要
Privacy-preserving distributed average consensus has received significant attention recently due to its wide applicability. Based on the achieved performances, existing approaches can be broadly classified into perfect accuracy-prioritized approaches such as secure multiparty computation (SMPC), and worst-case privacy-prioritized approaches such as differential privacy (DP). Methods of the first class achieve perfect output accuracy but reveal some private information, while methods from the second class provide privacy against the strongest adversary at the cost of a loss of accuracy. In this paper, we propose a general approach named adaptive differentially quantized subspace perturbation (ADQSP) which combines quantization schemes with so-called subspace perturbation. Although not relying on cryptographic primitives, the proposed approach enjoys the benefits of both accuracy-prioritized and privacy-prioritized methods and is able to unify them. More specifically, we show that by varying a single quantization parameter the proposed method can vary between SMPC-type performances and DP-type performances. Our results show the potential of exploiting traditional distributed signal processing tools for providing cryptographic guarantees. In addition to a comprehensive theoretical analysis, numerical validations are conducted to substantiate our results. © 2005-2012 IEEE.
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页码:1780 / 1793
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