Mitigating communications threats in decentralized federated learning through moving target defense
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 challe...
Datos rápidos
- Año
- 2024
- Venue
- Wireless Networks
- Identificador
- martinezbeltran2024mitigating
Cita sugerida
Enrique Tomás Martínez Beltrán, Pedro Miguel Sánchez Sánchez, Sergio López Bernal, Gérôme Bovet, Manuel Gil Pérez, Gregorio Martínez Pérez, Alberto Huertas Celdrán (2024). Mitigating communications threats in decentralized federated learning through moving target defense. Wireless Networks.
Resumen
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 focused on DFL communications. In response to these identified risks, this work introduces a security module to counter communication-based attacks for DFL platforms. 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, Fedstellar, allowing the deployment and monitoring of the federation. A DFL scenario with physical and virtual deployments have been executed, encompassing three security configurations: (i) a baseline without 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 showed an average F1 score of 95%, with the most secure configuration resulting in CPU usage peaking at 68% (\textpm 9%) in virtual deployments and network traffic reaching 480.8 MB (\textpm 18 MB), effectively mitigating risks associated with eavesdropping or eclipse attacks.
Autores
Palabras clave
Publicaciones relacionadas
Trabajos cercanos por temática, tipo y solapamiento de etiquetas.
Analyzing the robustness of decentralized horizontal and vertical federated learning architectures in a non-IID scenario
Pedro Miguel Sánchez Sánchez, Alberto Huertas Celdrán, Enrique Tomás Martínez Beltrán, Daniel Demeter, Gérôme Bovet, Gregorio Martínez Pérez, Burkhard Stiller
Federated learning (FL) enables participants to collaboratively train machine and deep learning models while safeguarding data privacy. However, the FL paradigm still has drawbacks that affect its trustworthiness, as malicious participants...
DART: A Solution for decentralized federated learning model robustness analysis
Chao Feng, Alberto Huertas Celdrán, Jan von der Assen, Enrique Tomás Martínez Beltrán, Gérôme Bovet, Burkhard Stiller
Federated Learning (FL) has emerged as a promising approach to address privacy concerns inherent in Machine Learning (ML) practices. However, conventional FL methods, particularly those following the Centralized FL (CFL) paradigm, utilize a...
Data fusion in neuromarketing: Multimodal analysis of biosignals, lifecycle stages, current advances, datasets, trends, and challenges
Mario Quiles Pérez, Enrique Tomás Martínez Beltrán, Sergio López Bernal, Eduardo Horna Prat, Luis Montesano Del Campo, Lorenzo Fernández Maimó, Alberto Huertas Celdrán
The primary goal of any company is to increase its profits by improving both the quality of its products and how they are advertised. In this context, neuromarketing seeks to enhance the promotion of products and generate a greater acceptan...
Investigación relacionada

Abr 2023 — Nov 2023
DEFENDIS: aprendizaje federado descentralizado para identificación y seguridad de dispositivos IoT
DEFENDIS desarrolla un marco para identificar de forma distribuida dispositivos IoT y abordar amenazas de seguridad mediante aprendizaje federado descentralizado.

Dic 2022 — Nov 2025
EU-GUARDIAN: marco europeo y pruebas de concepto para la automatización inteligente de la gestión de incidentes de ciberdefensa
Solución avanzada basada en IA para automatizar la gestión de incidentes de ciberdefensa y reforzar la postura y las capacidades operativas de ciberdefensa de la UE.