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2402.03990
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Subsampling is not Magic: Why Large Batch Sizes Work for Differentially Private Stochastic Optimisation
6 February 2024
Ossi Raisa
Hibiki Ito
Antti Honkela
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Papers citing
"Subsampling is not Magic: Why Large Batch Sizes Work for Differentially Private Stochastic Optimisation"
11 / 11 papers shown
Title
Avoiding Pitfalls for Privacy Accounting of Subsampled Mechanisms under Composition
C. Lebeda
Matthew Regehr
Gautam Kamath
Thomas Steinke
97
10
0
27 May 2024
Automatic Clipping: Differentially Private Deep Learning Made Easier and Stronger
Zhiqi Bu
Yu Wang
Sheng Zha
George Karypis
103
71
0
14 Jun 2022
Optimal Accounting of Differential Privacy via Characteristic Function
Yuqing Zhu
Jinshuo Dong
Yu Wang
55
102
0
16 Jun 2021
Numerical Composition of Differential Privacy
Sivakanth Gopi
Y. Lee
Lukas Wutschitz
54
179
0
05 Jun 2021
Privacy-preserving Data Sharing on Vertically Partitioned Data
Razane Tajeddine
Hibiki Ito
Samuel Kaski
Antti Honkela
FedML
50
8
0
19 Oct 2020
Tight Differential Privacy for Discrete-Valued Mechanisms and for the Subsampled Gaussian Mechanism Using FFT
A. Koskela
Hibiki Ito
Lukas Prediger
Antti Honkela
42
59
0
12 Jun 2020
Rényi Differential Privacy of the Sampled Gaussian Mechanism
Ilya Mironov
Kunal Talwar
Li Zhang
73
283
0
28 Aug 2019
Improving the Gaussian Mechanism for Differential Privacy: Analytical Calibration and Optimal Denoising
Borja Balle
Yu Wang
MLT
68
403
0
16 May 2018
On Large-Batch Training for Deep Learning: Generalization Gap and Sharp Minima
N. Keskar
Dheevatsa Mudigere
J. Nocedal
M. Smelyanskiy
P. T. P. Tang
ODL
419
2,936
0
15 Sep 2016
Deep Learning with Differential Privacy
Martín Abadi
Andy Chu
Ian Goodfellow
H. B. McMahan
Ilya Mironov
Kunal Talwar
Li Zhang
FedML
SyDa
191
6,113
0
01 Jul 2016
On Sampling, Anonymization, and Differential Privacy: Or, k-Anonymization Meets Differential Privacy
Ninghui Li
Wahbeh H. Qardaji
D. Su
100
279
0
13 Jan 2011
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