Log in
Enquire now
‌

Mitigating Communications Threats in Decentralized Federated Learning through Moving Target Defense

OverviewStructured DataIssuesContributors

Contents

Is a
‌
Academic paper
0

Academic Paper attributes

arXiv ID
2307.117300
arXiv Classification
Computer science
Computer science
0
Publication URL
arxiv.org/pdf/2307.1...30.pdf0
Publisher
ArXiv
ArXiv
0
DOI
doi.org/10.48550/ar...07.117300
Paid/Free
Free0
Academic Discipline
Machine learning
Machine learning
0
Artificial Intelligence (AI)
Artificial Intelligence (AI)
0
Computer science
Computer science
0
Computer network
Computer network
0
Submission Date
July 21, 2023
0
December 9, 2023
0
Author Names
Gérôme Bovet0
Sergio López Bernal0
Pedro Miguel Sánchez Sánchez0
Gregorio Martínez Pérez0
Manuel Gil Pérez0
Alberto Huertas Celdrán0
Enrique Tomás Martínez Beltrán0
Paper abstract

The rise of Decentralized Federated Learning (DFL) has enabled the training of machine learning models across federated participants, fostering decentralized model aggregation and reducing dependence on a server. However, this approach introduces unique communication security challenges that have yet to be thoroughly addressed in the literature. These challenges primarily originate from the decentralized nature of the aggregation process, the varied roles and responsibilities of the participants, and the absence of a central authority to oversee and mitigate threats. Addressing these challenges, this paper first delineates a comprehensive threat model, highlighting the potential risks of DFL communications. In response to these identified risks, this work introduces a security module designed for DFL platforms to counter communication-based attacks. The module combines security techniques such as symmetric and asymmetric encryption with Moving Target Defense (MTD) techniques, including random neighbor selection and IP/port switching. The security module is implemented in a DFL platform called Fedstellar, allowing the deployment and monitoring of the federation. A DFL scenario has been deployed, involving eight physical devices implementing three security configurations: (i) a baseline with no security, (ii) an encrypted configuration, and (iii) a configuration integrating both encryption and MTD techniques. The effectiveness of the security module is validated through experiments with the MNIST dataset and eclipse attacks. The results indicated an average F1 score of 95%, with moderate increases in CPU usage (up to 63.2% +-3.5%) and network traffic (230 MB +-15 MB) under the most secure configuration, mitigating the risks posed by eavesdropping or eclipse attacks.

Timeline

No Timeline data yet.

Further Resources

Title
Author
Link
Type
Date
No Further Resources data yet.

References

Find more entities like Mitigating Communications Threats in Decentralized Federated Learning through Moving Target Defense

Use the Golden Query Tool to find similar entities by any field in the Knowledge Graph, including industry, location, and more.
Open Query Tool
Access by API
Golden Query Tool
Golden logo

Company

  • Home
  • Press & Media
  • Blog
  • Careers
  • WE'RE HIRING

Products

  • Knowledge Graph
  • Query Tool
  • Data Requests
  • Knowledge Storage
  • API
  • Pricing
  • Enterprise
  • ChatGPT Plugin

Legal

  • Terms of Service
  • Enterprise Terms of Service
  • Privacy Policy

Help

  • Help center
  • API Documentation
  • Contact Us
By using this site, you agree to our Terms of Service.