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Gradients Look Alike: Sensitivity is Often Overestimated in DP-SGD

Gradients Look Alike: Sensitivity is Often Overestimated in DP-SGD

1 July 2023
Anvith Thudi
Hengrui Jia
Casey Meehan
Ilia Shumailov
Nicolas Papernot
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Papers citing "Gradients Look Alike: Sensitivity is Often Overestimated in DP-SGD"

5 / 5 papers shown
Title
Inexact Unlearning Needs More Careful Evaluations to Avoid a False Sense
  of Privacy
Inexact Unlearning Needs More Careful Evaluations to Avoid a False Sense of Privacy
Jamie Hayes
Ilia Shumailov
Eleni Triantafillou
Amr Khalifa
Nicolas Papernot
MU
25
25
0
02 Mar 2024
Individual Privacy Accounting with Gaussian Differential Privacy
Individual Privacy Accounting with Gaussian Differential Privacy
A. Koskela
Marlon Tobaben
Antti Honkela
27
18
0
30 Sep 2022
Bounding Training Data Reconstruction in Private (Deep) Learning
Bounding Training Data Reconstruction in Private (Deep) Learning
Chuan Guo
Brian Karrer
Kamalika Chaudhuri
L. V. D. van der Maaten
97
47
0
28 Jan 2022
Manipulating SGD with Data Ordering Attacks
Manipulating SGD with Data Ordering Attacks
Ilia Shumailov
Zakhar Shumaylov
Dmitry Kazhdan
Yiren Zhao
Nicolas Papernot
Murat A. Erdogdu
Ross J. Anderson
AAML
109
87
0
19 Apr 2021
Individual Privacy Accounting via a Renyi Filter
Individual Privacy Accounting via a Renyi Filter
Vitaly Feldman
Tijana Zrnic
46
77
0
25 Aug 2020
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