arXiv Open Access 2023

How Potent are Evasion Attacks for Poisoning Federated Learning-Based Signal Classifiers?

Su Wang Rajeev Sahay Christopher G. Brinton
Lihat Sumber

Abstrak

There has been recent interest in leveraging federated learning (FL) for radio signal classification tasks. In FL, model parameters are periodically communicated from participating devices, training on their own local datasets, to a central server which aggregates them into a global model. While FL has privacy/security advantages due to raw data not leaving the devices, it is still susceptible to several adversarial attacks. In this work, we reveal the susceptibility of FL-based signal classifiers to model poisoning attacks, which compromise the training process despite not observing data transmissions. In this capacity, we develop an attack framework in which compromised FL devices perturb their local datasets using adversarial evasion attacks. As a result, the training process of the global model significantly degrades on in-distribution signals (i.e., signals received over channels with identical distributions at each edge device). We compare our work to previously proposed FL attacks and reveal that as few as one adversarial device operating with a low-powered perturbation under our attack framework can induce the potent model poisoning attack to the global classifier. Moreover, we find that more devices partaking in adversarial poisoning will proportionally degrade the classification performance.

Topik & Kata Kunci

Penulis (3)

S

Su Wang

R

Rajeev Sahay

C

Christopher G. Brinton

Format Sitasi

Wang, S., Sahay, R., Brinton, C.G. (2023). How Potent are Evasion Attacks for Poisoning Federated Learning-Based Signal Classifiers?. https://arxiv.org/abs/2301.08866

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Tahun Terbit
2023
Bahasa
en
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arXiv
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Open Access ✓