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Differential Privacy for Government Agencies -- Are We There Yet?
v1v2 (latest)

Differential Privacy for Government Agencies -- Are We There Yet?

17 February 2021
Joerg Drechsler
ArXiv (abs)PDFHTML

Papers citing "Differential Privacy for Government Agencies -- Are We There Yet?"

16 / 16 papers shown
Title
"I need a better description'': An Investigation Into User Expectations
  For Differential Privacy
"I need a better description'': An Investigation Into User Expectations For Differential Privacy
Rachel Cummings
Gabriel Kaptchuk
Elissa M. Redmiles
52
83
0
13 Oct 2021
Winning the NIST Contest: A scalable and general approach to
  differentially private synthetic data
Winning the NIST Contest: A scalable and general approach to differentially private synthetic data
Ryan McKenna
G. Miklau
Daniel Sheldon
SyDa
59
126
0
11 Aug 2021
The Limits of Differential Privacy (and its Misuse in Data Release and
  Machine Learning)
The Limits of Differential Privacy (and its Misuse in Data Release and Machine Learning)
J. Domingo-Ferrer
David Sánchez
Alberto Blanco-Justicia
88
109
0
04 Nov 2020
Bias and Variance of Post-processing in Differential Privacy
Bias and Variance of Post-processing in Differential Privacy
Keyu Zhu
Pascal Van Hentenryck
Ferdinando Fioretto
47
42
0
09 Oct 2020
Congenial Differential Privacy under Mandated Disclosure
Congenial Differential Privacy under Mandated Disclosure
Ruobin Gong
Xiangxu Meng
23
26
0
24 Aug 2020
Controlling Privacy Loss in Sampling Schemes: an Analysis of Stratified
  and Cluster Sampling
Controlling Privacy Loss in Sampling Schemes: an Analysis of Stratified and Cluster Sampling
Mark Bun
Jörg Drechsler
Marco Gaboardi
Audra McMillan
Jayshree Sarathy
105
7
0
24 Jul 2020
Differentially Private Simple Linear Regression
Differentially Private Simple Linear Regression
Daniel Alabi
Audra McMillan
Jayshree Sarathy
Adam D. Smith
Salil P. Vadhan
49
54
0
10 Jul 2020
SoK: Differential Privacies
SoK: Differential Privacies
Damien Desfontaines
Balázs Pejó
78
124
0
04 Jun 2019
Issues Encountered Deploying Differential Privacy
Issues Encountered Deploying Differential Privacy
S. Garfinkel
John M. Abowd
Sarah Powazek
42
111
0
06 Sep 2018
An Economic Analysis of Privacy Protection and Statistical Accuracy as
  Social Choices
An Economic Analysis of Privacy Protection and Statistical Accuracy as Social Choices
John M. Abowd
Ian M. Schmutte
27
124
0
20 Aug 2018
Privacy Amplification by Subsampling: Tight Analyses via Couplings and
  Divergences
Privacy Amplification by Subsampling: Tight Analyses via Couplings and Divergences
Borja Balle
Gilles Barthe
Marco Gaboardi
84
392
0
04 Jul 2018
Collecting Telemetry Data Privately
Collecting Telemetry Data Privately
Bolin Ding
Janardhan Kulkarni
Sergey Yekhanin
58
688
0
05 Dec 2017
Privacy Loss in Apple's Implementation of Differential Privacy on MacOS
  10.12
Privacy Loss in Apple's Implementation of Differential Privacy on MacOS 10.12
Jun Tang
Aleksandra Korolova
Xiaolong Bai
Xueqiang Wang
Xiaofeng Wang
45
291
0
08 Sep 2017
Deep Learning with Differential Privacy
Deep Learning with Differential Privacy
Martín Abadi
Andy Chu
Ian Goodfellow
H. B. McMahan
Ilya Mironov
Kunal Talwar
Li Zhang
FedMLSyDa
216
6,162
0
01 Jul 2016
RAPPOR: Randomized Aggregatable Privacy-Preserving Ordinal Response
RAPPOR: Randomized Aggregatable Privacy-Preserving Ordinal Response
Ulfar Erlingsson
Vasyl Pihur
Aleksandra Korolova
109
1,996
0
25 Jul 2014
A statistical framework for differential privacy
A statistical framework for differential privacy
Larry A. Wasserman
Shuheng Zhou
118
486
0
16 Nov 2008
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