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2310.01304
Cited By
Coupling public and private gradient provably helps optimization
2 October 2023
Ruixuan Liu
Zhiqi Bu
Yu-Xiang Wang
Sheng Zha
George Karypis
Re-assign community
ArXiv
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Papers citing
"Coupling public and private gradient provably helps optimization"
6 / 6 papers shown
Title
Scalable and Efficient Training of Large Convolutional Neural Networks with Differential Privacy
Zhiqi Bu
J. Mao
Shiyun Xu
131
47
0
21 May 2022
Differentially Private Fine-tuning of Language Models
Da Yu
Saurabh Naik
A. Backurs
Sivakanth Gopi
Huseyin A. Inan
...
Y. Lee
Andre Manoel
Lukas Wutschitz
Sergey Yekhanin
Huishuai Zhang
134
344
0
13 Oct 2021
Hyperparameter Tuning with Renyi Differential Privacy
Nicolas Papernot
Thomas Steinke
123
119
0
07 Oct 2021
Do Not Let Privacy Overbill Utility: Gradient Embedding Perturbation for Private Learning
Da Yu
Huishuai Zhang
Wei Chen
Tie-Yan Liu
FedML
SILM
91
110
0
25 Feb 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
267
1,808
0
14 Dec 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
294
6,943
0
20 Apr 2018
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