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On the Convergence of Large Language Model Optimizer for Black-Box Network Management

Author(s)
Lee, HoonZhou WentaoDebbah MerouaneLee Inkyu
Issued Date
2025-11
DOI
10.1109/TCOMM.2025.3592598
URI
https://scholarworks.unist.ac.kr/handle/201301/88975
Citation
IEEE TRANSACTIONS ON COMMUNICATIONS, v.73, no.11, pp.11385 - 11402
Abstract
Future wireless networks are expected to incorporate diverse services that often lack general mathematical models. To address such black-box network management tasks, the large language model (LLM) optimizer framework, which leverages pretrained LLMs as optimization agents, has recently been promoted as a promising solution. This framework utilizes natural language prompts describing the given optimization problems along with past solutions generated by LLMs themselves. As a result, LLMs can obtain efficient solutions autonomously without knowing the mathematical models of the objective functions. Although the viability of the LLM optimizer (LLMO) framework has been studied in various black-box scenarios, it has so far been limited to numerical simulations. For the first time, this paper establishes a theoretical foundation for the LLMO framework. With careful investigations of LLM inference steps, we can interpret the LLMO procedure as a finite-state Markov chain, and prove the convergence of the framework. Our results are extended to a more advanced multiple LLM architecture, where the impact of multiple LLMs is rigorously verified in terms of the convergence rate. Comprehensive numerical simulations validate our theoretical results and provide a deeper understanding of the underlying mechanisms of the LLMO framework.
Publisher
IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
ISSN
0090-6778
Keyword (Author)
OptimizationMathematical modelsConvergenceVectorsLinear programmingClosed boxNumerical simulationLarge language modelsResource managementGenetic algorithmsLarge language models (LLMs)black-box optimization (BBO)finite-state Markov chain
Keyword
MULTIUSER MIMO SYSTEMSCOMPUTATIONDESIGN

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