Jamming Attacks on Decentralized Federated Learning in General Multi-Hop Wireless Networks
Yi Shi, Yalin E. Sagduyu, Tugba Erpek

TL;DR
This paper investigates how jamming attacks can disrupt decentralized federated learning in multi-hop wireless networks, proposing algorithms for attack and deployment, and demonstrating significant performance degradation.
Contribution
It introduces novel algorithms for link attack selection and jammer deployment to maximize disruption of decentralized federated learning in wireless networks.
Findings
Jamming can significantly impair DFL performance.
Optimal jammer placement increases attack effectiveness.
The attack surface is characterized for secure deployment.
Abstract
Decentralized federated learning (DFL) is an effective approach to train a deep learning model at multiple nodes over a multi-hop network, without the need of a server having direct connections to all nodes. In general, as long as nodes are connected potentially via multiple hops, the DFL process will eventually allow each node to experience the effects of models from all other nodes via either direct connections or multi-hop paths, and thus is able to train a high-fidelity model at each node. We consider an effective attack that uses jammers to prevent the model exchanges between nodes. There are two attack scenarios. First, the adversary can attack any link under a certain budget. Once attacked, two end nodes of a link cannot exchange their models. Secondly, some jammers with limited jamming ranges are deployed in the network and a jammer can only jam nodes within its jamming range.…
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Taxonomy
TopicsMicrowave Imaging and Scattering Analysis
