Blockchain-Empowered Cyber-Secure Federated Learning for Trustworthy Edge Computing
Ervin Moore, Ahmed Imteaj, Md Zarif Hossain, Shabnam Rezapour, and M. Hadi Amini

TL;DR
This paper proposes a blockchain-based federated learning framework that enhances trustworthiness, fairness, and authenticity by detecting malicious agents, tracking contributions, and securely managing device identities using smart contracts.
Contribution
It introduces a novel trust, fairness, and authenticity mechanism in federated learning leveraging blockchain technology and reputation models to prevent malicious attacks.
Findings
Effective detection of malicious agents through outlier detection.
Successful integration of blockchain for secure reputation management.
Enhanced trust and fairness in federated learning processes.
Abstract
Federated Learning (FL) is a privacy-preserving distributed machine learning scheme, where each participant data remains on the participating devices and only the local model generated utilizing the local computational power is transmitted throughout the database. However, the distributed computational nature of FL creates the necessity to develop a mechanism that can remotely trigger any network agents, track their activities, and prevent threats to the overall process posed by malicious participants. Particularly, the FL paradigm may become vulnerable due to an active attack from the network participants, called a poisonous attack. In such an attack, the malicious participant acts as a benign agent capable of affecting the global model quality by uploading an obfuscated poisoned local model update to the server. This paper presents a cross-device FL model that ensures trustworthiness,…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data · Brain Tumor Detection and Classification · Cloud Data Security Solutions
