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2211.03942
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Privacy-Aware Compression for Federated Learning Through Numerical Mechanism Design
8 November 2022
Chuan Guo
Kamalika Chaudhuri
Pierre Stock
Michael G. Rabbat
FedML
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Papers citing
"Privacy-Aware Compression for Federated Learning Through Numerical Mechanism Design"
9 / 9 papers shown
Title
PBM-VFL: Vertical Federated Learning with Feature and Sample Privacy
Linh Tran
Timothy Castiglia
Stacy Patterson
Ana Milanova
FedML
40
0
0
23 Jan 2025
Exactly Minimax-Optimal Locally Differentially Private Sampling
Hyun-Young Park
Shahab Asoodeh
Si-Hyeon Lee
24
1
0
30 Oct 2024
Privacy-Aware Randomized Quantization via Linear Programming
Zhongteng Cai
Xueru Zhang
Mohammad Mahdi Khalili
33
2
0
01 Jun 2024
Universal Exact Compression of Differentially Private Mechanisms
Yanxiao Liu
Wei-Ning Chen
Ayfer Özgür
Cheuk Ting Li
33
2
0
28 May 2024
TernaryVote: Differentially Private, Communication Efficient, and Byzantine Resilient Distributed Optimization on Heterogeneous Data
Richeng Jin
Yujie Gu
Kai Yue
Xiaofan He
Zhaoyang Zhang
Huaiyu Dai
FedML
20
0
0
16 Feb 2024
Bounding Training Data Reconstruction in Private (Deep) Learning
Chuan Guo
Brian Karrer
Kamalika Chaudhuri
L. V. D. van der Maaten
103
53
0
28 Jan 2022
Linear Convergence in Federated Learning: Tackling Client Heterogeneity and Sparse Gradients
A. Mitra
Rayana H. Jaafar
George J. Pappas
Hamed Hassani
FedML
55
157
0
14 Feb 2021
FedPAQ: A Communication-Efficient Federated Learning Method with Periodic Averaging and Quantization
Amirhossein Reisizadeh
Aryan Mokhtari
Hamed Hassani
Ali Jadbabaie
Ramtin Pedarsani
FedML
157
760
0
28 Sep 2019
Optimal Geo-Indistinguishable Mechanisms for Location Privacy
N. E. Bordenabe
K. Chatzikokolakis
C. Palamidessi
34
275
0
20 Feb 2014
1