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A Survey on Secure and Private Federated Learning Using Blockchain:
  Theory and Application in Resource-constrained Computing

A Survey on Secure and Private Federated Learning Using Blockchain: Theory and Application in Resource-constrained Computing

24 March 2023
Ervin Moore
Ahmed Imteaj
S. Rezapour
M. Amini
ArXivPDFHTML

Papers citing "A Survey on Secure and Private Federated Learning Using Blockchain: Theory and Application in Resource-constrained Computing"

7 / 7 papers shown
Title
Securing Federated Learning with Control-Flow Attestation: A Novel
  Framework for Enhanced Integrity and Resilience against Adversarial Attacks
Securing Federated Learning with Control-Flow Attestation: A Novel Framework for Enhanced Integrity and Resilience against Adversarial Attacks
Zahir Alsulaimawi
54
2
0
15 Mar 2024
Security and Privacy Challenges of Large Language Models: A Survey
Security and Privacy Challenges of Large Language Models: A Survey
B. Das
M. H. Amini
Yanzhao Wu
PILM
ELM
17
98
0
30 Jan 2024
Trustworthy Federated Learning via Blockchain
Trustworthy Federated Learning via Blockchain
Zhanpeng Yang
Yuanming Shi
Yong Zhou
Zixin Wang
Kai Yang
32
66
0
13 Aug 2022
Blockchain Assisted Decentralized Federated Learning (BLADE-FL):
  Performance Analysis and Resource Allocation
Blockchain Assisted Decentralized Federated Learning (BLADE-FL): Performance Analysis and Resource Allocation
Jun Li
Yumeng Shao
Kang Wei
Ming Ding
Chuan Ma
Long Shi
Zhu Han
Vincent Poor
FedML
52
149
0
18 Jan 2021
FedAR: Activity and Resource-Aware Federated Learning Model for
  Distributed Mobile Robots
FedAR: Activity and Resource-Aware Federated Learning Model for Distributed Mobile Robots
Ahmed Imteaj
M. Amini
69
51
0
11 Jan 2021
Privacy and Robustness in Federated Learning: Attacks and Defenses
Privacy and Robustness in Federated Learning: Attacks and Defenses
Lingjuan Lyu
Han Yu
Xingjun Ma
Chen Chen
Lichao Sun
Jun Zhao
Qiang Yang
Philip S. Yu
FedML
169
244
0
07 Dec 2020
Adaptive Federated Learning in Resource Constrained Edge Computing
  Systems
Adaptive Federated Learning in Resource Constrained Edge Computing Systems
Shiqiang Wang
Tiffany Tuor
Theodoros Salonidis
K. Leung
C. Makaya
T. He
Kevin S. Chan
130
1,663
0
14 Apr 2018
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