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2206.13033
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Normalized/Clipped SGD with Perturbation for Differentially Private Non-Convex Optimization
27 June 2022
Xiaodong Yang
Huishuai Zhang
Wei Chen
Tie-Yan Liu
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Papers citing
"Normalized/Clipped SGD with Perturbation for Differentially Private Non-Convex Optimization"
17 / 17 papers shown
Title
DC-SGD: Differentially Private SGD with Dynamic Clipping through Gradient Norm Distribution Estimation
Chengkun Wei
Weixian Li
Chen Gong
Wenzhi Chen
63
0
0
29 Mar 2025
Nonlinear Stochastic Gradient Descent and Heavy-tailed Noise: A Unified Framework and High-probability Guarantees
Aleksandar Armacki
Shuhua Yu
Pranay Sharma
Gauri Joshi
Dragana Bajović
D. Jakovetić
S. Kar
62
2
0
17 Oct 2024
DPDR: Gradient Decomposition and Reconstruction for Differentially Private Deep Learning
Yixuan Liu
Li Xiong
Yuhan Liu
Yujie Gu
Ruixuan Liu
Hong Chen
45
1
0
04 Jun 2024
Delving into Differentially Private Transformer
Youlong Ding
Xueyang Wu
Yining Meng
Yonggang Luo
Hao Wang
Weike Pan
44
5
0
28 May 2024
PCDP-SGD: Improving the Convergence of Differentially Private SGD via Projection in Advance
Haichao Sha
Ruixuan Liu
Yi-xiao Liu
Hong Chen
57
1
0
06 Dec 2023
The Relative Gaussian Mechanism and its Application to Private Gradient Descent
Hadrien Hendrikx
Paul Mangold
A. Bellet
38
1
0
29 Aug 2023
ALI-DPFL: Differentially Private Federated Learning with Adaptive Local Iterations
Xinpeng Ling
Jie Fu
Kuncan Wang
Haitao Liu
Zhili Chen
FedML
44
2
0
21 Aug 2023
Convergence of AdaGrad for Non-convex Objectives: Simple Proofs and Relaxed Assumptions
Bo Wang
Huishuai Zhang
Zhirui Ma
Wei Chen
42
50
0
29 May 2023
Convergence and Privacy of Decentralized Nonconvex Optimization with Gradient Clipping and Communication Compression
Boyue Li
Yuejie Chi
26
12
0
17 May 2023
Private (Stochastic) Non-Convex Optimization Revisited: Second-Order Stationary Points and Excess Risks
Arun Ganesh
Daogao Liu
Sewoong Oh
Abhradeep Thakurta
ODL
38
13
0
20 Feb 2023
Differentially Private Learning with Per-Sample Adaptive Clipping
Tianyu Xia
Shuheng Shen
Su Yao
Xinyi Fu
Ke Xu
Xiaolong Xu
Xingbo Fu
40
16
0
01 Dec 2022
Automatic Clipping: Differentially Private Deep Learning Made Easier and Stronger
Zhiqi Bu
Yu Wang
Sheng Zha
George Karypis
37
69
0
14 Jun 2022
The Role of Adaptive Optimizers for Honest Private Hyperparameter Selection
Shubhankar Mohapatra
Sajin Sasy
Xi He
Gautam Kamath
Om Thakkar
114
32
0
09 Nov 2021
Hyperparameter Tuning with Renyi Differential Privacy
Nicolas Papernot
Thomas Steinke
135
120
0
07 Oct 2021
Extracting Training Data from Large Language Models
Nicholas Carlini
Florian Tramèr
Eric Wallace
Matthew Jagielski
Ariel Herbert-Voss
...
Tom B. Brown
D. Song
Ulfar Erlingsson
Alina Oprea
Colin Raffel
MLAU
SILM
297
1,833
0
14 Dec 2020
Tempered Sigmoid Activations for Deep Learning with Differential Privacy
Nicolas Papernot
Abhradeep Thakurta
Shuang Song
Steve Chien
Ulfar Erlingsson
AAML
147
178
0
28 Jul 2020
GLUE: A Multi-Task Benchmark and Analysis Platform for Natural Language Understanding
Alex Jinpeng Wang
Amanpreet Singh
Julian Michael
Felix Hill
Omer Levy
Samuel R. Bowman
ELM
304
7,005
0
20 Apr 2018
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