Differentially Private Confidence Intervals

Confidence intervals for the population mean of normally distributed data are some of the most standard statistical outputs one might want from a database. In this work we give practical differentially private algorithms for this task. We provide five algorithms and then compare them to each other and to prior work. We give concrete, experimental analysis of their accuracy and find that our algorithms provide much more accurate confidence intervals than prior work. For example, in one setting (with {\epsilon} = 0.1 and n = 2782) our algorithm yields an interval that is only 1/15th the size of the standard set by prior work.

[1]  Ashwin Machanavajjhala,et al.  No free lunch in data privacy , 2011, SIGMOD '11.

[2]  Or Sheffet,et al.  Differentially Private Ordinary Least Squares , 2015, ICML.

[3]  Marco Gaboardi,et al.  PSI (Ψ): a Private data Sharing Interface , 2016, ArXiv.

[4]  Eftychia Solea,et al.  Differentially Private Hypothesis Testing For Normal Random Variables. , 2014 .

[5]  Marco Gaboardi,et al.  Locally Private Mean Estimation: Z-test and Tight Confidence Intervals , 2018, AISTATS.

[6]  Kunal Talwar,et al.  Mechanism Design via Differential Privacy , 2007, 48th Annual IEEE Symposium on Foundations of Computer Science (FOCS'07).

[7]  W. Reed The Normal-Laplace Distribution and Its Relatives , 2006 .

[8]  Adam Groce,et al.  Differentially Private Nonparametric Hypothesis Testing , 2019, CCS.

[9]  Cynthia Dwork,et al.  Calibrating Noise to Sensitivity in Private Data Analysis , 2006, TCC.

[10]  Vishesh Karwa,et al.  Finite Sample Differentially Private Confidence Intervals , 2017, ITCS.

[11]  Jonathan Katz,et al.  Coupled-Worlds Privacy: Exploiting Adversarial Uncertainty in Statistical Data Privacy , 2013, 2013 IEEE 54th Annual Symposium on Foundations of Computer Science.

[12]  J. Neyman Outline of a Theory of Statistical Estimation Based on the Classical Theory of Probability , 1937 .

[13]  Adam D. Smith,et al.  Privacy-preserving statistical estimation with optimal convergence rates , 2011, STOC '11.

[14]  James Honaker,et al.  Bootstrap Inference and Differential Privacy: Standard Errors for Free∗ , 2018 .

[15]  Thomas Steinke,et al.  Concentrated Differential Privacy: Simplifications, Extensions, and Lower Bounds , 2016, TCC.

[16]  David Hinkley,et al.  Bootstrap Methods: Another Look at the Jackknife , 2008 .

[17]  Vito D'Orazio,et al.  Differential Privacy for Social Science Inference , 2015 .

[18]  Aleksandra B. Slavkovic,et al.  Differentially Private Uniformly Most Powerful Tests for Binomial Data , 2018, NeurIPS.