LGJul 16, 2025

Self-Adaptive and Robust Federated Spectrum Sensing without Benign Majority for Cellular Networks

arXiv:2507.12127v1h-index: 9
Originality Incremental advance
AI Analysis

It addresses spectrum scarcity and security issues in cellular networks, offering incremental improvements to federated learning methods for dynamic spectrum allocation.

This work tackles the challenges of labeled data scarcity and security vulnerabilities in Federated Learning-based spectrum sensing for cellular networks, proposing a semi-supervised approach and a novel defense mechanism that achieves near-perfect accuracy on unlabeled datasets and maintains robustness against data poisoning attacks even with many malicious participants.

Advancements in wireless and mobile technologies, including 5G advanced and the envisioned 6G, are driving exponential growth in wireless devices. However, this rapid expansion exacerbates spectrum scarcity, posing a critical challenge. Dynamic spectrum allocation (DSA)--which relies on sensing and dynamically sharing spectrum--has emerged as an essential solution to address this issue. While machine learning (ML) models hold significant potential for improving spectrum sensing, their adoption in centralized ML-based DSA systems is limited by privacy concerns, bandwidth constraints, and regulatory challenges. To overcome these limitations, distributed ML-based approaches such as Federated Learning (FL) offer promising alternatives. This work addresses two key challenges in FL-based spectrum sensing (FLSS). First, the scarcity of labeled data for training FL models in practical spectrum sensing scenarios is tackled with a semi-supervised FL approach, combined with energy detection, enabling model training on unlabeled datasets. Second, we examine the security vulnerabilities of FLSS, focusing on the impact of data poisoning attacks. Our analysis highlights the shortcomings of existing majority-based defenses in countering such attacks. To address these vulnerabilities, we propose a novel defense mechanism inspired by vaccination, which effectively mitigates data poisoning attacks without relying on majority-based assumptions. Extensive experiments on both synthetic and real-world datasets validate our solutions, demonstrating that FLSS can achieve near-perfect accuracy on unlabeled datasets and maintain Byzantine robustness against both targeted and untargeted data poisoning attacks, even when a significant proportion of participants are malicious.

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