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Achieving Secure and Differentially Private Computations in Multiparty
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Achieving Secure and Differentially Private Computations in Multiparty Settings

6 July 2017
Abbas Acar
Z. Berkay Celik
Hidayet Aksu
A. S. Uluagac
Patrick McDaniel
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Papers citing "Achieving Secure and Differentially Private Computations in Multiparty Settings"

2 / 2 papers shown
Title
TPMDP: Threshold Personalized Multi-party Differential Privacy via
  Optimal Gaussian Mechanism
TPMDP: Threshold Personalized Multi-party Differential Privacy via Optimal Gaussian Mechanism
Jiandong Liu
Lan Zhang
Chaojie Lv
Ting Yu
N. Freris
Xiang-Yang Li
29
0
0
18 May 2023
Training Differentially Private Models with Secure Multiparty Computation
Training Differentially Private Models with Secure Multiparty Computation
Sikha Pentyala
Davis Railsback
Ricardo Maia
Rafael Dowsley
David Melanson
Anderson C. A. Nascimento
Martine De Cock
18
14
0
05 Feb 2022
1