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HybridAlpha: An Efficient Approach for Privacy-Preserving Federated
  Learning

HybridAlpha: An Efficient Approach for Privacy-Preserving Federated Learning

12 December 2019
Runhua Xu
Nathalie Baracaldo
Yi Zhou
Ali Anwar
Heiko Ludwig
    FedML
ArXivPDFHTML

Papers citing "HybridAlpha: An Efficient Approach for Privacy-Preserving Federated Learning"

26 / 26 papers shown
Title
Privacy-Preserved Automated Scoring using Federated Learning for Educational Research
Privacy-Preserved Automated Scoring using Federated Learning for Educational Research
Ehsan Latif
Xiaoming Zhai
39
0
0
12 Mar 2025
TAPFed: Threshold Secure Aggregation for Privacy-Preserving Federated Learning
TAPFed: Threshold Secure Aggregation for Privacy-Preserving Federated Learning
Runhua Xu
Bo Li
Chao Li
J. Joshi
Shuai Ma
Jianxin Li
FedML
43
10
0
10 Jan 2025
Federated learning with differential privacy and an untrusted aggregator
Federated learning with differential privacy and an untrusted aggregator
Kunlong Liu
Trinabh Gupta
50
0
0
17 Dec 2023
Chained-DP: Can We Recycle Privacy Budget?
Jingyi Li
Guangjing Huang
Liekang Zeng
Lin Chen
Xu Chen
FedML
36
0
0
12 Sep 2023
FLIPS: Federated Learning using Intelligent Participant Selection
FLIPS: Federated Learning using Intelligent Participant Selection
R. Bhope
K.R. Jayaram
N. Venkatasubramanian
Ashish Verma
Gegi Thomas
FedML
29
3
0
07 Aug 2023
Vertical Federated Learning: Taxonomies, Threats, and Prospects
Vertical Federated Learning: Taxonomies, Threats, and Prospects
Qun Li
Chandra Thapa
Lawrence Ong
Yifeng Zheng
Hua Ma
S. Çamtepe
Anmin Fu
Yan Gao
FedML
49
10
0
03 Feb 2023
FedPerm: Private and Robust Federated Learning by Parameter Permutation
FedPerm: Private and Robust Federated Learning by Parameter Permutation
Hamid Mozaffari
Virendra J. Marathe
D. Dice
FedML
27
4
0
16 Aug 2022
How Much Privacy Does Federated Learning with Secure Aggregation
  Guarantee?
How Much Privacy Does Federated Learning with Secure Aggregation Guarantee?
A. Elkordy
Jiang Zhang
Yahya H. Ezzeldin
Konstantinos Psounis
A. Avestimehr
FedML
35
38
0
03 Aug 2022
MUD-PQFed: Towards Malicious User Detection in Privacy-Preserving
  Quantized Federated Learning
MUD-PQFed: Towards Malicious User Detection in Privacy-Preserving Quantized Federated Learning
Hua Ma
Qun Li
Yifeng Zheng
Zhi Zhang
Xiaoning Liu
Yan Gao
S. Al-Sarawi
Derek Abbott
FedML
37
3
0
19 Jul 2022
A review of Federated Learning in Intrusion Detection Systems for IoT
A review of Federated Learning in Intrusion Detection Systems for IoT
Aitor Belenguer
J. Navaridas
J. A. Pascual
28
15
0
26 Apr 2022
BEAS: Blockchain Enabled Asynchronous & Secure Federated Machine
  Learning
BEAS: Blockchain Enabled Asynchronous & Secure Federated Machine Learning
A. Mondal
Harpreet Virk
Debayan Gupta
40
15
0
06 Feb 2022
SCOTCH: An Efficient Secure Computation Framework for Secure Aggregation
SCOTCH: An Efficient Secure Computation Framework for Secure Aggregation
Yash More
Prashanthi Ramachandran
Priyam Panda
A. Mondal
Harpreet Virk
Debayan Gupta
FedML
27
11
0
19 Jan 2022
Secret Sharing Sharing For Highly Scalable Secure Aggregation
Secret Sharing Sharing For Highly Scalable Secure Aggregation
Timothy Stevens
Joseph P. Near
Christian Skalka
FedML
24
5
0
03 Jan 2022
FLoRA: Single-shot Hyper-parameter Optimization for Federated Learning
FLoRA: Single-shot Hyper-parameter Optimization for Federated Learning
Yi Zhou
Parikshit Ram
Theodoros Salonidis
Nathalie Baracaldo
Horst Samulowitz
Heiko Ludwig
AI4CE
37
25
0
15 Dec 2021
Achieving Model Fairness in Vertical Federated Learning
Achieving Model Fairness in Vertical Federated Learning
Changxin Liu
Zhenan Fan
Zirui Zhou
Yang Shi
J. Pei
Lingyang Chu
Yong Zhang
FedML
60
12
0
17 Sep 2021
Privacy-Preserving Machine Learning: Methods, Challenges and Directions
Privacy-Preserving Machine Learning: Methods, Challenges and Directions
Runhua Xu
Nathalie Baracaldo
J. Joshi
32
100
0
10 Aug 2021
Communication Efficiency in Federated Learning: Achievements and
  Challenges
Communication Efficiency in Federated Learning: Achievements and Challenges
Osama Shahid
Seyedamin Pouriyeh
R. Parizi
Quan Z. Sheng
Gautam Srivastava
Liang Zhao
FedML
40
74
0
23 Jul 2021
FLRA: A Reference Architecture for Federated Learning Systems
FLRA: A Reference Architecture for Federated Learning Systems
Sin Kit Lo
Qinghua Lu
Hye-Young Paik
Liming Zhu
FedML
AI4CE
47
24
0
22 Jun 2021
FedV: Privacy-Preserving Federated Learning over Vertically Partitioned
  Data
FedV: Privacy-Preserving Federated Learning over Vertically Partitioned Data
Runhua Xu
Nathalie Baracaldo
Yi Zhou
Ali Anwar
J. Joshi
Heiko Ludwig
FedML
13
75
0
05 Mar 2021
Information Theoretic Secure Aggregation with User Dropouts
Information Theoretic Secure Aggregation with User Dropouts
Yizhou Zhao
Hua Sun
FedML
59
67
0
19 Jan 2021
Privacy-preserving Decentralized Aggregation for Federated Learning
Privacy-preserving Decentralized Aggregation for Federated Learning
Beomyeol Jeon
S. Ferdous
Muntasir Raihan Rahman
A. Walid
FedML
28
52
0
13 Dec 2020
Distributed Additive Encryption and Quantization for Privacy Preserving
  Federated Deep Learning
Distributed Additive Encryption and Quantization for Privacy Preserving Federated Deep Learning
Hangyu Zhu
Rui Wang
Yaochu Jin
K. Liang
Jianting Ning
FedML
32
46
0
25 Nov 2020
A Systematic Literature Review on Federated Machine Learning: From A
  Software Engineering Perspective
A Systematic Literature Review on Federated Machine Learning: From A Software Engineering Perspective
Sin Kit Lo
Qinghua Lu
Chen Wang
Hye-Young Paik
Liming Zhu
FedML
48
83
0
22 Jul 2020
IBM Federated Learning: an Enterprise Framework White Paper V0.1
IBM Federated Learning: an Enterprise Framework White Paper V0.1
Heiko Ludwig
Nathalie Baracaldo
Gegi Thomas
Yi Zhou
Ali Anwar
...
Sean Laguna
Mikhail Yurochkin
Mayank Agarwal
Ebube Chuba
Annie Abay
FedML
131
157
0
22 Jul 2020
The OARF Benchmark Suite: Characterization and Implications for
  Federated Learning Systems
The OARF Benchmark Suite: Characterization and Implications for Federated Learning Systems
Sixu Hu
Yuan N. Li
Xu Liu
Yue Liu
Zhaomin Wu
Bingsheng He
FedML
18
53
0
14 Jun 2020
Learn to Forget: Machine Unlearning via Neuron Masking
Learn to Forget: Machine Unlearning via Neuron Masking
Yang Liu
Zhuo Ma
Ximeng Liu
Jian-wei Liu
Zhongyuan Jiang
Jianfeng Ma
Philip Yu
K. Ren
MU
22
61
0
24 Mar 2020
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