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1811.12469
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Amplification by Shuffling: From Local to Central Differential Privacy via Anonymity
29 November 2018
Ulfar Erlingsson
Vitaly Feldman
Ilya Mironov
A. Raghunathan
Kunal Talwar
Abhradeep Thakurta
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Papers citing
"Amplification by Shuffling: From Local to Central Differential Privacy via Anonymity"
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Title
Differential Privacy for Network Assortativity
Fei Ma
Jinzhi Ouyang
Xincheng Hu
40
0
0
06 May 2025
Towards Trustworthy Federated Learning with Untrusted Participants
Youssef Allouah
R. Guerraoui
John Stephan
FedML
55
0
0
03 May 2025
Learning from End User Data with Shuffled Differential Privacy over Kernel Densities
Tal Wagner
FedML
53
0
0
21 Feb 2025
Differentially Private Empirical Cumulative Distribution Functions
Antoine Barczewski
Amal Mawass
Jan Ramon
FedML
52
0
0
10 Feb 2025
Distributed Differentially Private Data Analytics via Secure Sketching
Jakob Burkhardt
Hannah Keller
Claudio Orlandi
Chris Schwiegelshohn
FedML
82
0
0
30 Nov 2024
Near Exact Privacy Amplification for Matrix Mechanisms
Christopher A. Choquette-Choo
Arun Ganesh
Saminul Haque
Thomas Steinke
Abhradeep Thakurta
38
6
0
08 Oct 2024
Differential Private Stochastic Optimization with Heavy-tailed Data: Towards Optimal Rates
Puning Zhao
Xiaogang Xu
Zhe Liu
Chong Wang
Rongfei Fan
Qingming Li
48
1
0
19 Aug 2024
Universally Harmonizing Differential Privacy Mechanisms for Federated Learning: Boosting Accuracy and Convergence
Shuya Feng
Meisam Mohammady
Hanbin Hong
Shenao Yan
Ashish Kundu
Binghui Wang
Yuan Hong
FedML
44
3
0
20 Jul 2024
Beyond Statistical Estimation: Differentially Private Individual Computation via Shuffling
Shaowei Wang
Changyu Dong
Xiangfu Song
Jin Li
Zhili Zhou
Di Wang
Han Wu
41
0
0
26 Jun 2024
Universal Exact Compression of Differentially Private Mechanisms
Yanxiao Liu
Wei-Ning Chen
Ayfer Özgür
Cheuk Ting Li
42
2
0
28 May 2024
Privacy Amplification by Iteration for ADMM with (Strongly) Convex Objective Functions
T.-H. Hubert Chan
Hao Xie
Mengshi Zhao
32
1
0
14 Dec 2023
DP-NMT: Scalable Differentially-Private Machine Translation
Timour Igamberdiev
Doan Nam Long Vu
Felix Künnecke
Zhuo Yu
Jannik Holmer
Ivan Habernal
34
7
0
24 Nov 2023
Differentially Private Aggregation via Imperfect Shuffling
Badih Ghazi
Ravi Kumar
Pasin Manurangsi
Jelani Nelson
Samson Zhou
FedML
30
1
0
28 Aug 2023
Samplable Anonymous Aggregation for Private Federated Data Analysis
Kunal Talwar
Shan Wang
Audra McMillan
Vojta Jina
Vitaly Feldman
...
Congzheng Song
Karl Tarbe
Sebastian Vogt
L. Winstrom
Shundong Zhou
FedML
38
13
0
27 Jul 2023
Differentially Private Heavy Hitter Detection using Federated Analytics
Karan N. Chadha
Junye Chen
John C. Duchi
Vitaly Feldman
H. Hashemi
O. Javidbakht
Audra McMillan
Kunal Talwar
FedML
27
7
0
21 Jul 2023
Random Number Generators and Seeding for Differential Privacy
N. Holohan
SyDa
19
1
0
07 Jul 2023
Pure-DP Aggregation in the Shuffle Model: Error-Optimal and Communication-Efficient
Badih Ghazi
Ravi Kumar
Pasin Manurangsi
FedML
31
2
0
28 May 2023
Analyzing the Shuffle Model through the Lens of Quantitative Information Flow
Mireya Jurado
Ramon G. Gonze
Mário S. Alvim
C. Palamidessi
27
1
0
22 May 2023
Amplification by Shuffling without Shuffling
Borja Balle
James Bell
Adria Gascon
FedML
37
2
0
18 May 2023
Privacy Amplification via Shuffling: Unified, Simplified, and Tightened
Shaowei Wang
FedML
26
9
0
11 Apr 2023
How to DP-fy ML: A Practical Guide to Machine Learning with Differential Privacy
Natalia Ponomareva
Hussein Hazimeh
Alexey Kurakin
Zheng Xu
Carson E. Denison
H. B. McMahan
Sergei Vassilvitskii
Steve Chien
Abhradeep Thakurta
96
167
0
01 Mar 2023
Label Inference Attack against Split Learning under Regression Setting
Shangyu Xie
Xin Yang
Yuanshun Yao
Tianyi Liu
Taiqing Wang
Jiankai Sun
FedML
29
9
0
18 Jan 2023
Differentially Private Federated Clustering over Non-IID Data
Yiwei Li
Shuai Wang
Chong-Yung Chi
Tony Q. S. Quek
FedML
33
12
0
03 Jan 2023
Stateful Switch: Optimized Time Series Release with Local Differential Privacy
Qingqing Ye
Haibo Hu
Kai Huang
M. Au
Qiao Xue
39
10
0
17 Dec 2022
A New Linear Scaling Rule for Private Adaptive Hyperparameter Optimization
Ashwinee Panda
Xinyu Tang
Saeed Mahloujifar
Vikash Sehwag
Prateek Mittal
43
11
0
08 Dec 2022
Skellam Mixture Mechanism: a Novel Approach to Federated Learning with Differential Privacy
Ergute Bao
Yizheng Zhu
X. Xiao
Xuming Hu
Beng Chin Ooi
B. Tan
Khin Mi Mi Aung
FedML
31
18
0
08 Dec 2022
Straggler-Resilient Differentially-Private Decentralized Learning
Yauhen Yakimenka
Chung-Wei Weng
Hsuan-Yin Lin
E. Rosnes
J. Kliewer
29
6
0
06 Dec 2022
Differentially Private Image Classification from Features
Harsh Mehta
Walid Krichene
Abhradeep Thakurta
Alexey Kurakin
Ashok Cutkosky
52
7
0
24 Nov 2022
Private Federated Statistics in an Interactive Setting
Audra McMillan
O. Javidbakht
Kunal Talwar
Elliot Briggs
Mike Chatzidakis
...
Paul J. Pelzl
Rehan Rishi
Congzheng Song
Shan Wang
Shundong Zhou
FedML
24
6
0
18 Nov 2022
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
Discrete Distribution Estimation under User-level Local Differential Privacy
Jayadev Acharya
Yuhan Liu
Ziteng Sun
29
16
0
07 Nov 2022
An Easy-to-use and Robust Approach for the Differentially Private De-Identification of Clinical Textual Documents
Yakini Tchouka
Jean-François Couchot
David Laiymani
OOD
39
1
0
02 Nov 2022
Anonymized Histograms in Intermediate Privacy Models
Badih Ghazi
Pritish Kamath
Ravi Kumar
Pasin Manurangsi
PICV
115
1
0
27 Oct 2022
Contraction of Locally Differentially Private Mechanisms
S. Asoodeh
Huanyu Zhang
26
10
0
24 Oct 2022
Fine-Tuning with Differential Privacy Necessitates an Additional Hyperparameter Search
Yannis Cattan
Christopher A. Choquette-Choo
Nicolas Papernot
Abhradeep Thakurta
26
20
0
05 Oct 2022
Composition of Differential Privacy & Privacy Amplification by Subsampling
Thomas Steinke
64
49
0
02 Oct 2022
Private Read Update Write (PRUW) in Federated Submodel Learning (FSL): Communication Efficient Schemes With and Without Sparsification
Sajani Vithana
S. Ulukus
FedML
20
19
0
09 Sep 2022
Algorithms with More Granular Differential Privacy Guarantees
Badih Ghazi
Ravi Kumar
Pasin Manurangsi
Thomas Steinke
59
6
0
08 Sep 2022
Stronger Privacy Amplification by Shuffling for Rényi and Approximate Differential Privacy
Vitaly Feldman
Audra McMillan
Kunal Talwar
FedML
29
47
0
09 Aug 2022
Differentially Private Linear Bandits with Partial Distributed Feedback
Fengjiao Li
Xingyu Zhou
Bo Ji
FedML
34
13
0
12 Jul 2022
Differentially Private Stochastic Linear Bandits: (Almost) for Free
Osama A. Hanna
Antonious M. Girgis
Christina Fragouli
Suhas Diggavi
FedML
27
18
0
07 Jul 2022
DarKnight: An Accelerated Framework for Privacy and Integrity Preserving Deep Learning Using Trusted Hardware
H. Hashemi
Yongqin Wang
M. Annavaram
FedML
26
58
0
30 Jun 2022
"You Can't Fix What You Can't Measure": Privately Measuring Demographic Performance Disparities in Federated Learning
Marc Juárez
Aleksandra Korolova
FedML
32
9
0
24 Jun 2022
On Privacy and Personalization in Cross-Silo Federated Learning
Ziyu Liu
Shengyuan Hu
Zhiwei Steven Wu
Virginia Smith
FedML
22
51
0
16 Jun 2022
Distributed Differential Privacy in Multi-Armed Bandits
Sayak Ray Chowdhury
Xingyu Zhou
25
12
0
12 Jun 2022
Impact of Sampling on Locally Differentially Private Data Collection
Sayan Biswas
Graham Cormode
Carsten Maple
FedML
22
0
0
02 Jun 2022
Private Federated Submodel Learning with Sparsification
Sajani Vithana
S. Ulukus
FedML
26
10
0
31 May 2022
Improved Utility Analysis of Private CountSketch
Rasmus Pagh
M. Thorup
FedML
34
20
0
17 May 2022
Optimal Algorithms for Mean Estimation under Local Differential Privacy
Hilal Asi
Vitaly Feldman
Kunal Talwar
40
41
0
05 May 2022
Differentially Private Triangle and 4-Cycle Counting in the Shuffle Model
Jacob Imola
Takao Murakami
Kamalika Chaudhuri
24
23
0
03 May 2022
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