Literature DB >> 25302341

Convergence Rates for Differentially Private Statistical Estimation.

Kamalika Chaudhuri1, Daniel Hsu2.   

Abstract

Differential privacy is a cryptographically-motivated definition of privacy which has gained significant attention over the past few years. Differentially private solutions enforce privacy by adding random noise to a function computed over the data, and the challenge in designing such algorithms is to control the added noise in order to optimize the privacy-accuracy-sample size tradeoff. This work studies differentially-private statistical estimation, and shows upper and lower bounds on the convergence rates of differentially private approximations to statistical estimators. Our results reveal a formal connection between differential privacy and the notion of Gross Error Sensitivity (GES) in robust statistics, by showing that the convergence rate of any differentially private approximation to an estimator that is accurate over a large class of distributions has to grow with the GES of the estimator. We then provide an upper bound on the convergence rate of a differentially private approximation to an estimator with bounded range and bounded GES. We show that the bounded range condition is necessary if we wish to ensure a strict form of differential privacy.

Entities:  

Year:  2012        PMID: 25302341      PMCID: PMC4188376     

Source DB:  PubMed          Journal:  Proc Int Conf Mach Learn


  2 in total

1.  Differentially Private Empirical Risk Minimization.

Authors:  Kamalika Chaudhuri; Claire Monteleoni; Anand D Sarwate
Journal:  J Mach Learn Res       Date:  2011-03       Impact factor: 3.654

2.  Sample Complexity Bounds for Differentially Private Learning.

Authors:  Kamalika Chaudhuri; Daniel Hsu
Journal:  JMLR Workshop Conf Proc       Date:  2011
  2 in total
  2 in total

1.  Signal Processing and Machine Learning with Differential Privacy: Algorithms and challenges for continuous data.

Authors:  Anand D Sarwate; Kamalika Chaudhuri
Journal:  IEEE Signal Process Mag       Date:  2013-09-01       Impact factor: 12.551

2.  COINSTAC: A Privacy Enabled Model and Prototype for Leveraging and Processing Decentralized Brain Imaging Data.

Authors:  Sergey M Plis; Anand D Sarwate; Dylan Wood; Christopher Dieringer; Drew Landis; Cory Reed; Sandeep R Panta; Jessica A Turner; Jody M Shoemaker; Kim W Carter; Paul Thompson; Kent Hutchison; Vince D Calhoun
Journal:  Front Neurosci       Date:  2016-08-19       Impact factor: 4.677

  2 in total

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