Differentially Private Change-Point Detection Academic Article uri icon

abstract

  • 2018 Curran Associates Inc.All rights reserved. The change-point detection problem seeks to identify distributional changes at an unknown change-point k in a stream of data. This problem appears in many important practical settings involving personal data, including biosurveillance, fault detection, finance, signal detection, and security systems. The field of differential privacy offers data analysis tools that provide powerful worst-case privacy guarantees. We study the statistical problem of change-point detection through the lens of differential privacy. We give private algorithms for both online and offline change-point detection, analyze these algorithms theoretically, and provide empirical validation of our results.

published proceedings

  • ADVANCES IN NEURAL INFORMATION PROCESSING SYSTEMS 31 (NIPS 2018)

author list (cited authors)

  • Cummings, R., Krehbiel, S., Mei, Y., Tuo, R., & Zhang, W.

complete list of authors

  • Cummings, Rachel||Krehbiel, Sara||Mei, Yajun||Tuo, Rui||Zhang, Wanrong

publication date

  • January 2018