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Geographic Spines in the 2020 Census Disclosure Avoidance System
v1v2v3 (latest)

Geographic Spines in the 2020 Census Disclosure Avoidance System

30 March 2022
Ryan Cumings-Menon
John M. Abowd
Robert Ashmead
Daniel Kifer
Philip Leclerc
Jeffrey C. Ocker
M. Ratcliffe
Pavel I Zhuravlev
    CML
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Papers citing "Geographic Spines in the 2020 Census Disclosure Avoidance System"

10 / 10 papers shown
Title
The 2020 United States Decennial Census Is More Private Than You (Might) Think
The 2020 United States Decennial Census Is More Private Than You (Might) Think
Buxin Su
Weijie J. Su
Chendi Wang
63
3
0
11 Oct 2024
Slowly Scaling Per-Record Differential Privacy
Slowly Scaling Per-Record Differential Privacy
Brian Finley
Anthony M Caruso
Justin C Doty
Ashwin Machanavajjhala
Mikaela R Meyer
David Pujol
William Sexton
Zachary Terner
71
1
0
26 Sep 2024
Disclosure Avoidance for the 2020 Census Demographic and Housing
  Characteristics File
Disclosure Avoidance for the 2020 Census Demographic and Housing Characteristics File
Ryan Cumings-Menon
Robert Ashmead
Daniel Kifer
Philip Leclerc
Matthew Spence
Pavel I Zhuravlev
John M. Abowd
52
3
0
18 Dec 2023
Random (Un)rounding : Vulnerabilities in Discrete Attribute Disclosure in the 2021 Canadian Census
Random (Un)rounding : Vulnerabilities in Discrete Attribute Disclosure in the 2021 Canadian Census
Christopher West
Ivy Vecna
Raiyan Chowdhury
40
0
0
25 Jul 2023
Bayesian and Frequentist Semantics for Common Variations of Differential
  Privacy: Applications to the 2020 Census
Bayesian and Frequentist Semantics for Common Variations of Differential Privacy: Applications to the 2020 Census
Daniel Kifer
John M. Abowd
Robert Ashmead
Ryan Cumings-Menon
Philip Leclerc
Ashwin Machanavajjhala
William Sexton
Pavel I Zhuravlev
87
27
0
07 Sep 2022
Optimizing error of high-dimensional statistical queries under
  differential privacy
Optimizing error of high-dimensional statistical queries under differential privacy
Ryan McKenna
G. Miklau
Michael Hay
Ashwin Machanavajjhala
48
114
0
10 Aug 2018
Concentrated Differential Privacy: Simplifications, Extensions, and
  Lower Bounds
Concentrated Differential Privacy: Simplifications, Extensions, and Lower Bounds
Mark Bun
Thomas Steinke
92
839
0
06 May 2016
Optimizing Histogram Queries under Differential Privacy
Optimizing Histogram Queries under Differential Privacy
Chao Li
Michael Hay
Vibhor Rastogi
G. Miklau
A. Mcgregor
79
352
0
23 Dec 2009
Boosting the Accuracy of Differentially-Private Histograms Through
  Consistency
Boosting the Accuracy of Differentially-Private Histograms Through Consistency
Michael Hay
Vibhor Rastogi
G. Miklau
Dan Suciu
FedML
119
239
0
06 Apr 2009
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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