Maximum Privacy under Perfect Utility in Sensor Networks
ID:42 View Protection:ATTENDEE Updated Time:2020-08-05 10:17:00 Hits:992 Oral Presentation

Start Time:2020-06-09 15:20(Asia/Shanghai)

Duration:20min

Session:R Regular Session » R13Sensor Networks and Adaptive Processing

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Abstract
Each node or sensor in a network makes a local observation that is linearly related to a set of public and private parameters. The nodes send their observations to a fusion center to allow it to estimate a set of public parameters. However, the fusion center may also abuse this information to estimate other private parameters. To prevent leakage of the private parameters, each node first sanitizes its local observation using a local privacy mechanism before transmitting it to the fusion center. We consider the maximum privacy achievable under perfect utility in terms of the Cram閞-Rao lower bounds. We propose a method to maximize the estimation error for inferring the private parameters while ensuring the estimation error for inferring the public parameters remains unchanged after sanitizing the sensors' measurements.
Keywords
estimation privacy; sensor networks; decentralized system; Cram閞-Rao lower bound
Speaker
Chong Xiao
Nanyang Technological University, Singapore

Submission Author
Chong Xiao Nanyang Technological University, Singapore
Wee Peng Nanyang Technological University, Singapore
Yang Song Nanyang Technological University, Singapore
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Important Date
  • Conference Date

    Jun 08

    2020

    to

    Jun 11

    2020

  • Jan 12 2020

    Draft paper submission deadline

  • Apr 15 2020

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  • Dec 31 2020

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Sponsored By
IEEE Signal Processing Society
Organized By
Zhejiang University
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