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Private Stochastic Convex Optimization with Optimal Rates

Private Stochastic Convex Optimization with Optimal Rates

27 August 2019
Raef Bassily
Vitaly Feldman
Kunal Talwar
Abhradeep Thakurta
ArXivPDFHTML

Papers citing "Private Stochastic Convex Optimization with Optimal Rates"

50 / 166 papers shown
Title
Characterizing the Accuracy-Communication-Privacy Trade-off in Distributed Stochastic Convex Optimization
Sudeep Salgia
Nikola Pavlovic
Yuejie Chi
Qing Zhao
39
0
0
06 Jan 2025
Faster Algorithms for User-Level Private Stochastic Convex Optimization
Faster Algorithms for User-Level Private Stochastic Convex Optimization
Andrew Lowy
Daogao Liu
Hilal Asi
28
0
0
24 Oct 2024
Adaptive Batch Size for Privately Finding Second-Order Stationary Points
Adaptive Batch Size for Privately Finding Second-Order Stationary Points
Daogao Liu
Kunal Talwar
130
0
0
10 Oct 2024
Noise is All You Need: Private Second-Order Convergence of Noisy SGD
Noise is All You Need: Private Second-Order Convergence of Noisy SGD
Dmitrii Avdiukhin
Michael Dinitz
Chenglin Fan
G. Yaroslavtsev
34
0
0
09 Oct 2024
Improved Sample Complexity for Private Nonsmooth Nonconvex Optimization
Improved Sample Complexity for Private Nonsmooth Nonconvex Optimization
Guy Kornowski
Daogao Liu
Kunal Talwar
34
2
0
08 Oct 2024
Differentially Private Bilevel Optimization
Differentially Private Bilevel Optimization
Guy Kornowski
142
0
0
29 Sep 2024
Federated Online Prediction from Experts with Differential Privacy:
  Separations and Regret Speed-ups
Federated Online Prediction from Experts with Differential Privacy: Separations and Regret Speed-ups
Fengyu Gao
Ruiquan Huang
Jing Yang
FedML
35
0
0
27 Sep 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
Jiafei Wu
Zhe Liu
Chong Wang
Rongfei Fan
Qingming Li
48
1
0
19 Aug 2024
Private and Federated Stochastic Convex Optimization: Efficient
  Strategies for Centralized Systems
Private and Federated Stochastic Convex Optimization: Efficient Strategies for Centralized Systems
Roie Reshef
Kfir Y. Levy
FedML
27
0
0
17 Jul 2024
Private Heterogeneous Federated Learning Without a Trusted Server
  Revisited: Error-Optimal and Communication-Efficient Algorithms for Convex
  Losses
Private Heterogeneous Federated Learning Without a Trusted Server Revisited: Error-Optimal and Communication-Efficient Algorithms for Convex Losses
Changyu Gao
Andrew Lowy
Xingyu Zhou
Stephen J. Wright
FedML
31
2
0
12 Jul 2024
Private Zeroth-Order Nonsmooth Nonconvex Optimization
Private Zeroth-Order Nonsmooth Nonconvex Optimization
Qinzi Zhang
Hoang Tran
Ashok Cutkosky
40
4
0
27 Jun 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
Tangent differential privacy
Tangent differential privacy
Lexing Ying
16
0
0
06 Jun 2024
Private Online Learning via Lazy Algorithms
Private Online Learning via Lazy Algorithms
Hilal Asi
Tomer Koren
Daogao Liu
Kunal Talwar
109
0
0
05 Jun 2024
Private Stochastic Convex Optimization with Heavy Tails: Near-Optimality
  from Simple Reductions
Private Stochastic Convex Optimization with Heavy Tails: Near-Optimality from Simple Reductions
Hilal Asi
Daogao Liu
Kevin Tian
42
3
0
04 Jun 2024
Learning with User-Level Local Differential Privacy
Learning with User-Level Local Differential Privacy
Puning Zhao
Li Shen
Rongfei Fan
Qingming Li
Huiwen Wu
Jiafei Wu
Zhe Liu
34
2
0
27 May 2024
BadGD: A unified data-centric framework to identify gradient descent
  vulnerabilities
BadGD: A unified data-centric framework to identify gradient descent vulnerabilities
ChiHua Wang
Guang Cheng
SILM
42
5
0
24 May 2024
A Huber Loss Minimization Approach to Mean Estimation under User-level
  Differential Privacy
A Huber Loss Minimization Approach to Mean Estimation under User-level Differential Privacy
Puning Zhao
Lifeng Lai
Li Shen
Qingming Li
Jiafei Wu
Zhe Liu
47
7
0
22 May 2024
Neural Collapse Meets Differential Privacy: Curious Behaviors of NoisyGD
  with Near-perfect Representation Learning
Neural Collapse Meets Differential Privacy: Curious Behaviors of NoisyGD with Near-perfect Representation Learning
Chendi Wang
Yuqing Zhu
Weijie J. Su
Yu-Xiang Wang
AAML
52
4
0
14 May 2024
Uniformly Stable Algorithms for Adversarial Training and Beyond
Uniformly Stable Algorithms for Adversarial Training and Beyond
Jiancong Xiao
Jiawei Zhang
Zhimin Luo
Asuman Ozdaglar
AAML
45
0
0
03 May 2024
Advances in Differential Privacy and Differentially Private Machine
  Learning
Advances in Differential Privacy and Differentially Private Machine Learning
Saswat Das
Subhankar Mishra
22
3
0
06 Apr 2024
Public-data Assisted Private Stochastic Optimization: Power and
  Limitations
Public-data Assisted Private Stochastic Optimization: Power and Limitations
Enayat Ullah
Michael Menart
Raef Bassily
Cristóbal Guzmán
Raman Arora
30
1
0
06 Mar 2024
Mirror Descent Algorithms with Nearly Dimension-Independent Rates for
  Differentially-Private Stochastic Saddle-Point Problems
Mirror Descent Algorithms with Nearly Dimension-Independent Rates for Differentially-Private Stochastic Saddle-Point Problems
Tomás González
Cristóbal Guzmán
Courtney Paquette
34
3
0
05 Mar 2024
Shifted Interpolation for Differential Privacy
Shifted Interpolation for Differential Privacy
Jinho Bok
Weijie Su
Jason M. Altschuler
25
8
0
01 Mar 2024
Differentially Private Worst-group Risk Minimization
Differentially Private Worst-group Risk Minimization
Xinyu Zhou
Raef Bassily
35
2
0
29 Feb 2024
On the Convergence of Differentially-Private Fine-tuning: To Linearly
  Probe or to Fully Fine-tune?
On the Convergence of Differentially-Private Fine-tuning: To Linearly Probe or to Fully Fine-tune?
Shuqi Ke
Charlie Hou
Giulia Fanti
Sewoong Oh
38
4
0
29 Feb 2024
How to Make the Gradients Small Privately: Improved Rates for
  Differentially Private Non-Convex Optimization
How to Make the Gradients Small Privately: Improved Rates for Differentially Private Non-Convex Optimization
Andrew Lowy
Jonathan R. Ullman
Stephen J. Wright
43
6
0
17 Feb 2024
RQP-SGD: Differential Private Machine Learning through Noisy SGD and
  Randomized Quantization
RQP-SGD: Differential Private Machine Learning through Noisy SGD and Randomized Quantization
Ce Feng
Parv Venkitasubramaniam
29
1
0
09 Feb 2024
Personalized Differential Privacy for Ridge Regression
Personalized Differential Privacy for Ridge Regression
Krishna Acharya
Franziska Boenisch
Rakshit Naidu
Juba Ziani
13
2
0
30 Jan 2024
Differentially Private Non-Convex Optimization under the KL Condition
  with Optimal Rates
Differentially Private Non-Convex Optimization under the KL Condition with Optimal Rates
Michael Menart
Enayat Ullah
Raman Arora
Raef Bassily
Cristóbal Guzmán
35
2
0
22 Nov 2023
User-level Differentially Private Stochastic Convex Optimization:
  Efficient Algorithms with Optimal Rates
User-level Differentially Private Stochastic Convex Optimization: Efficient Algorithms with Optimal Rates
Hilal Asi
Daogao Liu
26
8
0
07 Nov 2023
Initialization Matters: Privacy-Utility Analysis of Overparameterized
  Neural Networks
Initialization Matters: Privacy-Utility Analysis of Overparameterized Neural Networks
Jiayuan Ye
Zhenyu Zhu
Fanghui Liu
Reza Shokri
V. Cevher
32
12
0
31 Oct 2023
Differentially Private Reward Estimation with Preference Feedback
Differentially Private Reward Estimation with Preference Feedback
Sayak Ray Chowdhury
Xingyu Zhou
Nagarajan Natarajan
38
4
0
30 Oct 2023
DP-SGD with weight clipping
DP-SGD with weight clipping
Antoine Barczewski
Jan Ramon
11
1
0
27 Oct 2023
DPZero: Private Fine-Tuning of Language Models without Backpropagation
DPZero: Private Fine-Tuning of Language Models without Backpropagation
Liang Zhang
Bingcong Li
K. K. Thekumparampil
Sewoong Oh
Niao He
28
11
0
14 Oct 2023
Improved Analysis of Sparse Linear Regression in Local Differential
  Privacy Model
Improved Analysis of Sparse Linear Regression in Local Differential Privacy Model
Liyang Zhu
Meng Ding
Vaneet Aggarwal
Jinhui Xu
Di Wang
26
4
0
11 Oct 2023
Better and Simpler Lower Bounds for Differentially Private Statistical
  Estimation
Better and Simpler Lower Bounds for Differentially Private Statistical Estimation
Shyam Narayanan
FedML
19
9
0
10 Oct 2023
Stability and Generalization for Minibatch SGD and Local SGD
Stability and Generalization for Minibatch SGD and Local SGD
Yunwen Lei
Tao Sun
Mingrui Liu
32
3
0
02 Oct 2023
Tight Bounds for Machine Unlearning via Differential Privacy
Tight Bounds for Machine Unlearning via Differential Privacy
Yiyang Huang
C. Canonne
MU
19
10
0
02 Sep 2023
The Relative Gaussian Mechanism and its Application to Private Gradient
  Descent
The Relative Gaussian Mechanism and its Application to Private Gradient Descent
Hadrien Hendrikx
Paul Mangold
A. Bellet
33
1
0
29 Aug 2023
Private Federated Learning with Autotuned Compression
Private Federated Learning with Autotuned Compression
Enayat Ullah
Christopher A. Choquette-Choo
Peter Kairouz
Sewoong Oh
FedML
15
6
0
20 Jul 2023
The importance of feature preprocessing for differentially private
  linear optimization
The importance of feature preprocessing for differentially private linear optimization
Ziteng Sun
A. Suresh
A. Menon
24
3
0
19 Jul 2023
Differentially Private Domain Adaptation with Theoretical Guarantees
Differentially Private Domain Adaptation with Theoretical Guarantees
Raef Bassily
Corinna Cortes
Anqi Mao
M. Mohri
30
0
0
15 Jun 2023
Safeguarding Data in Multimodal AI: A Differentially Private Approach to
  CLIP Training
Safeguarding Data in Multimodal AI: A Differentially Private Approach to CLIP Training
Alyssa Huang
Peihan Liu
Ryumei Nakada
Linjun Zhang
Wanrong Zhang
VLM
71
5
0
13 Jun 2023
(Amplified) Banded Matrix Factorization: A unified approach to private
  training
(Amplified) Banded Matrix Factorization: A unified approach to private training
Christopher A. Choquette-Choo
Arun Ganesh
Ryan McKenna
H. B. McMahan
Keith Rush
Abhradeep Thakurta
Zheng Xu
FedML
28
35
0
13 Jun 2023
Learning across Data Owners with Joint Differential Privacy
Learning across Data Owners with Joint Differential Privacy
Yangsibo Huang
Haotian Jiang
Daogao Liu
Mohammad Mahdian
Jieming Mao
Vahab Mirrokni
FedML
39
0
0
25 May 2023
Faster Differentially Private Convex Optimization via Second-Order
  Methods
Faster Differentially Private Convex Optimization via Second-Order Methods
Arun Ganesh
Mahdi Haghifam
Thomas Steinke
Abhradeep Thakurta
13
10
0
22 May 2023
Online Learning Under A Separable Stochastic Approximation Framework
Online Learning Under A Separable Stochastic Approximation Framework
Min Gan
Xiang-Xiang Su
Guang-yong Chen
Jing Chen
25
0
0
12 May 2023
On User-Level Private Convex Optimization
On User-Level Private Convex Optimization
Badih Ghazi
Pritish Kamath
Ravi Kumar
Raghu Meka
Pasin Manurangsi
Chiyuan Zhang
FedML
8
8
0
08 May 2023
Revisiting Gradient Clipping: Stochastic bias and tight convergence
  guarantees
Revisiting Gradient Clipping: Stochastic bias and tight convergence guarantees
Anastasia Koloskova
Hadrien Hendrikx
Sebastian U. Stich
104
49
0
02 May 2023
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