ResearchTrend.AI
  • Papers
  • Communities
  • Events
  • Blog
  • Pricing
Papers
Communities
Social Events
Terms and Conditions
Pricing
Parameter LabParameter LabTwitterGitHubLinkedInBlueskyYoutube

© 2025 ResearchTrend.AI, All rights reserved.

  1. Home
  2. Papers
  3. 1603.01887
  4. Cited By
Concentrated Differential Privacy

Concentrated Differential Privacy

6 March 2016
Cynthia Dwork
G. Rothblum
ArXivPDFHTML

Papers citing "Concentrated Differential Privacy"

50 / 270 papers shown
Title
Conformal-DP: Differential Privacy on Riemannian Manifolds via Conformal Transformation
Conformal-DP: Differential Privacy on Riemannian Manifolds via Conformal Transformation
Peilin He
Liou Tang
M. Amin Rahimian
James Joshi
36
0
0
29 Apr 2025
Differentially Private Geodesic and Linear Regression
Differentially Private Geodesic and Linear Regression
Aditya Kulkarni
Carlos Soto
28
0
0
15 Apr 2025
Towards Optimal Differentially Private Regret Bounds in Linear MDPs
Towards Optimal Differentially Private Regret Bounds in Linear MDPs
Sharan Sahu
60
0
0
12 Apr 2025
Empirical Calibration and Metric Differential Privacy in Language Models
Empirical Calibration and Metric Differential Privacy in Language Models
Pedro Faustini
Natasha Fernandes
Annabelle McIver
Mark Dras
65
0
0
18 Mar 2025
PREAMBLE: Private and Efficient Aggregation of Block Sparse Vectors and Applications
PREAMBLE: Private and Efficient Aggregation of Block Sparse Vectors and Applications
Hilal Asi
Vitaly Feldman
Hannah Keller
G. Rothblum
Kunal Talwar
FedML
59
1
0
14 Mar 2025
(ε,δ)(\varepsilon, δ)(ε,δ) Considered Harmful: Best Practices for Reporting Differential Privacy Guarantees
Juan Felipe Gomez
B. Kulynych
G. Kaissis
Jamie Hayes
Borja Balle
Antti Honkela
56
0
0
13 Mar 2025
Trustworthy Machine Learning via Memorization and the Granular Long-Tail: A Survey on Interactions, Tradeoffs, and Beyond
Qiongxiu Li
Xiaoyu Luo
Yiyi Chen
Johannes Bjerva
48
0
0
10 Mar 2025
Balls-and-Bins Sampling for DP-SGD
Balls-and-Bins Sampling for DP-SGD
Lynn Chua
Badih Ghazi
Charlie Harrison
Ethan Leeman
Pritish Kamath
Ravi Kumar
Pasin Manurangsi
Amer Sinha
Chiyuan Zhang
82
4
0
21 Dec 2024
But Can You Use It? Design Recommendations for Differentially Private
  Interactive Systems
But Can You Use It? Design Recommendations for Differentially Private Interactive Systems
Liudas Panavas
Joshua Snoke
Erika Tyagi
C. Bowen
Aaron R. Williams
82
0
0
16 Dec 2024
Meeting Utility Constraints in Differential Privacy: A Privacy-Boosting
  Approach
Meeting Utility Constraints in Differential Privacy: A Privacy-Boosting Approach
Bo Jiang
Wanrong Zhang
Donghang Lu
Jian Du
Sagar Sharma
Qiang Yan
78
0
0
13 Dec 2024
Differentially Private Learned Indexes
Differentially Private Learned Indexes
Jianzhang Du
Tilak Mudgal
Rutvi Rahul Gadre
Yukui Luo
Chenghong Wang
FedML
24
0
0
28 Oct 2024
Privacy without Noisy Gradients: Slicing Mechanism for Generative Model
  Training
Privacy without Noisy Gradients: Slicing Mechanism for Generative Model Training
Kristjan Greenewald
Yuancheng Yu
Hao Wang
Kai Xu
36
0
0
25 Oct 2024
DMM: Distributed Matrix Mechanism for Differentially-Private Federated
  Learning using Packed Secret Sharing
DMM: Distributed Matrix Mechanism for Differentially-Private Federated Learning using Packed Secret Sharing
Alexander Bienstock
Ujjwal Kumar
Antigoni Polychroniadou
FedML
39
0
0
21 Oct 2024
Differential Privacy on Trust Graphs
Differential Privacy on Trust Graphs
Badih Ghazi
Ravi Kumar
Pasin Manurangsi
Serena Wang
23
1
0
15 Oct 2024
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
39
3
0
11 Oct 2024
Privately Learning Smooth Distributions on the Hypercube by Projections
Privately Learning Smooth Distributions on the Hypercube by Projections
Clément Lalanne
Sébastien Gadat
38
1
0
16 Sep 2024
A Statistical Viewpoint on Differential Privacy: Hypothesis Testing,
  Representation and Blackwell's Theorem
A Statistical Viewpoint on Differential Privacy: Hypothesis Testing, Representation and Blackwell's Theorem
Weijie J. Su
31
1
0
14 Sep 2024
Protecting Activity Sensing Data Privacy Using Hierarchical Information
  Dissociation
Protecting Activity Sensing Data Privacy Using Hierarchical Information Dissociation
Guangjing Wang
Hanqing Guo
Yuanda Wang
Bocheng Chen
Ce Zhou
Qiben Yan
35
0
0
04 Sep 2024
Differentially Private Stochastic Gradient Descent with Fixed-Size
  Minibatches: Tighter RDP Guarantees with or without Replacement
Differentially Private Stochastic Gradient Descent with Fixed-Size Minibatches: Tighter RDP Guarantees with or without Replacement
Jeremiah Birrell
Reza Ebrahimi
R. Behnia
Jason L. Pacheco
46
0
0
19 Aug 2024
Differential Private Stochastic Optimization with Heavy-tailed Data:
  Towards Optimal Rates
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
Smooth Sensitivity Revisited: Towards Optimality
Smooth Sensitivity Revisited: Towards Optimality
Richard Hladík
Jakub Tetek
40
0
0
06 Jul 2024
Correlated Privacy Mechanisms for Differentially Private Distributed Mean Estimation
Correlated Privacy Mechanisms for Differentially Private Distributed Mean Estimation
Sajani Vithana
V. Cadambe
Flavio du Pin Calmon
Haewon Jeong
FedML
50
1
0
03 Jul 2024
Attack-Aware Noise Calibration for Differential Privacy
Attack-Aware Noise Calibration for Differential Privacy
B. Kulynych
Juan Felipe Gomez
G. Kaissis
Flavio du Pin Calmon
Carmela Troncoso
57
6
0
02 Jul 2024
On Convex Optimization with Semi-Sensitive Features
On Convex Optimization with Semi-Sensitive Features
Badih Ghazi
Pritish Kamath
Ravi Kumar
Pasin Manurangsi
Raghu Meka
Chiyuan Zhang
25
0
0
27 Jun 2024
Centering Policy and Practice: Research Gaps around Usable Differential
  Privacy
Centering Policy and Practice: Research Gaps around Usable Differential Privacy
Rachel Cummings
Jayshree Sarathy
38
7
0
17 Jun 2024
Private Geometric Median
Private Geometric Median
Mahdi Haghifam
Thomas Steinke
Jonathan R. Ullman
35
0
0
11 Jun 2024
PriME: Privacy-aware Membership profile Estimation in networks
PriME: Privacy-aware Membership profile Estimation in networks
Abhinav Chakraborty
Sayak Chatterjee
Sagnik Nandy
28
1
0
04 Jun 2024
Avoiding Pitfalls for Privacy Accounting of Subsampled Mechanisms under Composition
Avoiding Pitfalls for Privacy Accounting of Subsampled Mechanisms under Composition
C. Lebeda
Matthew Regehr
Gautam Kamath
Thomas Steinke
53
9
0
27 May 2024
A Universal Metric of Dataset Similarity for Cross-silo Federated
  Learning
A Universal Metric of Dataset Similarity for Cross-silo Federated Learning
Ahmed Elhussein
Gamze Gursoy
FedML
OOD
39
2
0
29 Apr 2024
A Survey on Federated Analytics: Taxonomy, Enabling Techniques, Applications and Open Issues
A Survey on Federated Analytics: Taxonomy, Enabling Techniques, Applications and Open Issues
Zibo Wang
Haichao Ji
Yifei Zhu
Dan Wang
Zhu Han
51
1
0
19 Apr 2024
Advances in Differential Privacy and Differentially Private Machine
  Learning
Advances in Differential Privacy and Differentially Private Machine Learning
Saswat Das
Subhankar Mishra
30
4
0
06 Apr 2024
Deciphering the Interplay between Local Differential Privacy, Average
  Bayesian Privacy, and Maximum Bayesian Privacy
Deciphering the Interplay between Local Differential Privacy, Average Bayesian Privacy, and Maximum Bayesian Privacy
Xiaojin Zhang
Yulin Fei
Wei Chen
39
1
0
25 Mar 2024
Programming Frameworks for Differential Privacy
Programming Frameworks for Differential Privacy
Marco Gaboardi
Michael Hay
Salil P. Vadhan
38
1
0
17 Mar 2024
Private Count Release: A Simple and Scalable Approach for Private Data
  Analytics
Private Count Release: A Simple and Scalable Approach for Private Data Analytics
Ryan Rogers
43
0
0
08 Mar 2024
Differentially Private Representation Learning via Image Captioning
Differentially Private Representation Learning via Image Captioning
Tom Sander
Yaodong Yu
Maziar Sanjabi
Alain Durmus
Yi Ma
Kamalika Chaudhuri
Chuan Guo
71
3
0
04 Mar 2024
State-of-the-Art Approaches to Enhancing Privacy Preservation of Machine Learning Datasets: A Survey
State-of-the-Art Approaches to Enhancing Privacy Preservation of Machine Learning Datasets: A Survey
Chaoyu Zhang
Shaoyu Li
AILaw
52
3
0
25 Feb 2024
Private Gradient Descent for Linear Regression: Tighter Error Bounds and
  Instance-Specific Uncertainty Estimation
Private Gradient Descent for Linear Regression: Tighter Error Bounds and Instance-Specific Uncertainty Estimation
Gavin Brown
Krishnamurthy Dvijotham
Georgina Evans
Daogao Liu
Adam D. Smith
Abhradeep Thakurta
42
3
0
21 Feb 2024
Implicit Bias in Noisy-SGD: With Applications to Differentially Private
  Training
Implicit Bias in Noisy-SGD: With Applications to Differentially Private Training
Tom Sander
Maxime Sylvestre
Alain Durmus
31
1
0
13 Feb 2024
Cross-silo Federated Learning with Record-level Personalized
  Differential Privacy
Cross-silo Federated Learning with Record-level Personalized Differential Privacy
Junxu Liu
Jian Lou
Li Xiong
Jinfei Liu
Xiaofeng Meng
40
6
0
29 Jan 2024
General Inferential Limits Under Differential and Pufferfish Privacy
General Inferential Limits Under Differential and Pufferfish Privacy
J. Bailie
Ruobin Gong
35
1
0
27 Jan 2024
Wasserstein Differential Privacy
Wasserstein Differential Privacy
Chengyi Yang
Jiayin Qi
Aimin Zhou
14
2
0
23 Jan 2024
Private Fine-tuning of Large Language Models with Zeroth-order Optimization
Private Fine-tuning of Large Language Models with Zeroth-order Optimization
Xinyu Tang
Ashwinee Panda
Milad Nasr
Saeed Mahloujifar
Prateek Mittal
47
18
0
09 Jan 2024
Conciliating Privacy and Utility in Data Releases via Individual
  Differential Privacy and Microaggregation
Conciliating Privacy and Utility in Data Releases via Individual Differential Privacy and Microaggregation
Jordi Soria-Comas
David Sánchez
J. Domingo-Ferrer
Sergio Martínez
Luis Del Vasto-Terrientes
21
0
0
21 Dec 2023
Enhancing Trade-offs in Privacy, Utility, and Computational Efficiency
  through MUltistage Sampling Technique (MUST)
Enhancing Trade-offs in Privacy, Utility, and Computational Efficiency through MUltistage Sampling Technique (MUST)
Xingyuan Zhao
Fang Liu
30
0
0
20 Dec 2023
Unified Enhancement of Privacy Bounds for Mixture Mechanisms via
  $f$-Differential Privacy
Unified Enhancement of Privacy Bounds for Mixture Mechanisms via fff-Differential Privacy
Chendi Wang
Buxin Su
Jiayuan Ye
Reza Shokri
Weijie J. Su
FedML
21
10
0
30 Oct 2023
Flow-based Distributionally Robust Optimization
Flow-based Distributionally Robust Optimization
Chen Xu
Jonghyeok Lee
Xiuyuan Cheng
Yao Xie
OOD
36
4
0
30 Oct 2023
Mean Estimation Under Heterogeneous Privacy Demands
Mean Estimation Under Heterogeneous Privacy Demands
Syomantak Chaudhuri
Konstantin Miagkov
T. Courtade
14
1
0
19 Oct 2023
MCMC for Bayesian nonparametric mixture modeling under differential
  privacy
MCMC for Bayesian nonparametric mixture modeling under differential privacy
Mario Beraha
Stefano Favaro
Vinayak Rao
41
1
0
15 Oct 2023
Using Participants' Utility Functions to Compare Versions of
  Differential Privacy
Using Participants' Utility Functions to Compare Versions of Differential Privacy
Nitin Kohli
Michael Carl Tschantz
25
0
0
10 Oct 2023
Online Sensitivity Optimization in Differentially Private Learning
Online Sensitivity Optimization in Differentially Private Learning
Filippo Galli
C. Palamidessi
Tommaso Cucinotta
24
1
0
02 Oct 2023
123456
Next