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Autores principales: Chen, Shuai, Zu, Yong, Feng, Zhixi, Yang, Shuyuan, Li, Mengchang
Formato: Preprint
Publicado: 2025
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Acceso en línea:https://arxiv.org/abs/2501.17888
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author Chen, Shuai
Zu, Yong
Feng, Zhixi
Yang, Shuyuan
Li, Mengchang
author_facet Chen, Shuai
Zu, Yong
Feng, Zhixi
Yang, Shuyuan
Li, Mengchang
contents The growing scarcity of spectrum resources and rapid proliferation of wireless devices make efficient radio network management critical. While deep learning-enhanced Cognitive Radio Technology (CRT) provides promising solutions for tasks such as radio signal classification (RSC), denoising, and spectrum allocation, existing DL-based CRT frameworks are typically task-specific and lack scalability in diverse real-world applications. This limitation naturally leads to the exploration of Large Language Models (LLMs), whose exceptional cross-domain generalization capabilities offer new potential for advancing CRT. To bridge this gap, we propose RadioLLM, a novel framework that integrates Hybrid Prompt and Token Reprogramming (HPTR) for combining radio signal features with expert knowledge, and a Frequency-Attuned Fusion (FAF) module for enhanced high-frequency feature modeling. Extensive evaluations on multiple benchmark datasets demonstrate that RadioLLM achieves superior performance compared to existing baselines in the majority of testing scenarios.
format Preprint
id arxiv_https___arxiv_org_abs_2501_17888
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle RadioLLM: Introducing Large Language Model into Cognitive Radio via Hybrid Prompt and Token Reprogrammings
Chen, Shuai
Zu, Yong
Feng, Zhixi
Yang, Shuyuan
Li, Mengchang
Signal Processing
Artificial Intelligence
Machine Learning
The growing scarcity of spectrum resources and rapid proliferation of wireless devices make efficient radio network management critical. While deep learning-enhanced Cognitive Radio Technology (CRT) provides promising solutions for tasks such as radio signal classification (RSC), denoising, and spectrum allocation, existing DL-based CRT frameworks are typically task-specific and lack scalability in diverse real-world applications. This limitation naturally leads to the exploration of Large Language Models (LLMs), whose exceptional cross-domain generalization capabilities offer new potential for advancing CRT. To bridge this gap, we propose RadioLLM, a novel framework that integrates Hybrid Prompt and Token Reprogramming (HPTR) for combining radio signal features with expert knowledge, and a Frequency-Attuned Fusion (FAF) module for enhanced high-frequency feature modeling. Extensive evaluations on multiple benchmark datasets demonstrate that RadioLLM achieves superior performance compared to existing baselines in the majority of testing scenarios.
title RadioLLM: Introducing Large Language Model into Cognitive Radio via Hybrid Prompt and Token Reprogrammings
topic Signal Processing
Artificial Intelligence
Machine Learning
url https://arxiv.org/abs/2501.17888