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The Power of Factorization Mechanisms in Local and Central Differential
  Privacy

The Power of Factorization Mechanisms in Local and Central Differential Privacy

19 November 2019
Alex Edmonds
Aleksandar Nikolov
Jonathan R. Ullman
ArXivPDFHTML

Papers citing "The Power of Factorization Mechanisms in Local and Central Differential Privacy"

20 / 20 papers shown
Title
Differential Privacy for Network Assortativity
Differential Privacy for Network Assortativity
Fei Ma
Jinzhi Ouyang
Xincheng Hu
42
0
0
06 May 2025
Binned Group Algebra Factorization for Differentially Private Continual Counting
Binned Group Algebra Factorization for Differentially Private Continual Counting
Monika Henzinger
Nikita P. Kalinin
Jalaj Upadhyay
31
2
0
06 Apr 2025
Differential Privacy with Higher Utility by Exploiting Coordinate-wise Disparity: Laplace Mechanism Can Beat Gaussian in High Dimensions
Differential Privacy with Higher Utility by Exploiting Coordinate-wise Disparity: Laplace Mechanism Can Beat Gaussian in High Dimensions
Gokularam Muthukrishnan
Sheetal Kalyani
87
0
0
28 Jan 2025
Differentially Private Online Federated Learning with Correlated Noise
Differentially Private Online Federated Learning with Correlated Noise
Jiaojiao Zhang
Linglingzhi Zhu
Mikael Johansson
FedML
49
1
0
10 Jan 2025
On Computing Pairwise Statistics with Local Differential Privacy
On Computing Pairwise Statistics with Local Differential Privacy
Badih Ghazi
Pritish Kamath
Ravi Kumar
Pasin Manurangsi
Adam Sealfon
FedML
37
2
0
24 Jun 2024
Sample-Optimal Locally Private Hypothesis Selection and the Provable
  Benefits of Interactivity
Sample-Optimal Locally Private Hypothesis Selection and the Provable Benefits of Interactivity
A. F. Pour
Hassan Ashtiani
S. Asoodeh
46
0
0
09 Dec 2023
Some Constructions of Private, Efficient, and Optimal $K$-Norm and
  Elliptic Gaussian Noise
Some Constructions of Private, Efficient, and Optimal KKK-Norm and Elliptic Gaussian Noise
Matthew Joseph
Alexander Yu
29
2
0
27 Sep 2023
A Unifying Framework for Differentially Private Sums under Continual
  Observation
A Unifying Framework for Differentially Private Sums under Continual Observation
Monika Henzinger
Jalaj Upadhyay
Sarvagya Upadhyay
FedML
31
15
0
18 Jul 2023
An Optimal and Scalable Matrix Mechanism for Noisy Marginals under
  Convex Loss Functions
An Optimal and Scalable Matrix Mechanism for Noisy Marginals under Convex Loss Functions
Yingtai Xiao
Guanlin He
Danfeng Zhang
Daniel Kifer
37
4
0
14 May 2023
PRIMO: Private Regression in Multiple Outcomes
PRIMO: Private Regression in Multiple Outcomes
Seth Neel
25
0
0
07 Mar 2023
General Gaussian Noise Mechanisms and Their Optimality for Unbiased Mean
  Estimation
General Gaussian Noise Mechanisms and Their Optimality for Unbiased Mean Estimation
Aleksandar Nikolov
Haohua Tang
49
4
0
31 Jan 2023
Answering Private Linear Queries Adaptively using the Common Mechanism
Answering Private Linear Queries Adaptively using the Common Mechanism
Yingtai Xiao
Guanhong Wang
Danfeng Zhang
Daniel Kifer
65
7
0
30 Nov 2022
Multi-Epoch Matrix Factorization Mechanisms for Private Machine Learning
Multi-Epoch Matrix Factorization Mechanisms for Private Machine Learning
Christopher A. Choquette-Choo
H. B. McMahan
Keith Rush
Abhradeep Thakurta
39
42
0
12 Nov 2022
Almost Tight Error Bounds on Differentially Private Continual Counting
Almost Tight Error Bounds on Differentially Private Continual Counting
Monika Henzinger
Jalaj Upadhyay
Sarvagya Upadhyay
FedML
24
38
0
09 Nov 2022
Improved Differential Privacy for SGD via Optimal Private Linear
  Operators on Adaptive Streams
Improved Differential Privacy for SGD via Optimal Private Linear Operators on Adaptive Streams
S. Denisov
H. B. McMahan
J. Rush
Adam D. Smith
Abhradeep Thakurta
FedML
33
60
0
16 Feb 2022
The Price of Differential Privacy under Continual Observation
The Price of Differential Privacy under Continual Observation
Palak Jain
Sofya Raskhodnikova
Satchit Sivakumar
Adam D. Smith
31
51
0
01 Dec 2021
AHEAD: Adaptive Hierarchical Decomposition for Range Query under Local
  Differential Privacy
AHEAD: Adaptive Hierarchical Decomposition for Range Query under Local Differential Privacy
L. Du
Zhikun Zhang
Shaojie Bai
Changchang Liu
S. Ji
Peng Cheng
Jiming Chen
96
36
0
14 Oct 2021
Iterative Methods for Private Synthetic Data: Unifying Framework and New
  Methods
Iterative Methods for Private Synthetic Data: Unifying Framework and New Methods
Terrance Liu
G. Vietri
Zhiwei Steven Wu
SyDa
33
61
0
14 Jun 2021
On Distributed Differential Privacy and Counting Distinct Elements
On Distributed Differential Privacy and Counting Distinct Elements
Lijie Chen
Badih Ghazi
Ravi Kumar
Pasin Manurangsi
FedML
23
29
0
21 Sep 2020
Prochlo: Strong Privacy for Analytics in the Crowd
Prochlo: Strong Privacy for Analytics in the Crowd
Andrea Bittau
Ulfar Erlingsson
Petros Maniatis
Ilya Mironov
A. Raghunathan
David Lie
Mitch Rudominer
Ushasree Kode
J. Tinnés
B. Seefeld
91
278
0
02 Oct 2017
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