Large Language Model (LLM)-enabled In-context Learning for Wireless Network Optimization: A Case Study of Power Control
Hao Zhou, Chengming Hu, Dun Yuan, Ye Yuan, Di Wu, Xue Liu, and Charlie Zhang

TL;DR
This paper demonstrates how large language models can be used for wireless network optimization, specifically power control, by leveraging in-context learning to avoid complex training processes.
Contribution
It introduces an LLM-based in-context learning algorithm for wireless network optimization that bypasses traditional model training and hyper-parameter tuning.
Findings
Achieves comparable performance to deep reinforcement learning methods.
Reduces complexity by eliminating the need for dedicated model training.
Shows potential for efficient wireless network optimization.
Abstract
Large language model (LLM) has recently been considered a promising technique for many fields. This work explores LLM-based wireless network optimization via in-context learning. To showcase the potential of LLM technologies, we consider the base station (BS) power control as a case study, a fundamental but crucial technique that is widely investigated in wireless networks. Different from existing machine learning (ML) methods, our proposed in-context learning algorithm relies on LLM's inference capabilities. It avoids the complexity of tedious model training and hyper-parameter fine-tuning, which is a well-known bottleneck of many ML algorithms. Specifically, the proposed algorithm first describes the target task via formatted natural language, and then designs the in-context learning framework and demonstration examples. After that, it considers two cases, namely discrete-state and…
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Taxonomy
TopicsIPv6, Mobility, Handover, Networks, Security · Wireless Networks and Protocols · Advanced MIMO Systems Optimization
MethodsBalanced Selection
