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Auteurs principaux: Li, Yuanhao, Wang, Haozhe, Min, Geyong, Georgalas, Nektarios, Miao, Wang
Format: Preprint
Publié: 2026
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Accès en ligne:https://arxiv.org/abs/2603.10564
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author Li, Yuanhao
Wang, Haozhe
Min, Geyong
Georgalas, Nektarios
Miao, Wang
author_facet Li, Yuanhao
Wang, Haozhe
Min, Geyong
Georgalas, Nektarios
Miao, Wang
contents The integration of Generative AI models into AI-native network systems offers a transformative path toward achieving autonomous and adaptive control. However, the application of such models to continuous control tasks is impeded by intrinsic architectural limitations, including finite context windows, the lack of explicit reward signals, and the degradation of the long context. This paper posits that the key to unlocking robust continuous control is enabling agents to internalize experience by distilling it into their parameters, rather than relying on prompt-based memory. To this end, we propose a novel self-finetuning framework that enables agentic systems to learn continuously through direct interaction with the environment, bypassing the need for handcrafted rewards. Our framework implements a bi-perspective reflection mechanism that generates autonomous linguistic feedback to construct preference datasets from interaction history. A subsequent preference-based fine-tuning process distills long-horizon experiences into the model's parameters. We evaluate our approach on a dynamic Radio Access Network (RAN) slicing task, a challenging multi-objective control problem that requires the resolution of acute trade-offs between spectrum efficiency, service quality, and reconfiguration stability under volatile network conditions. Experimental results show that our framework outperforms standard Reinforcement Learning (RL) baselines and existing Large Language Model (LLM)-based agents in sample efficiency, stability, and multi-metric optimization. These findings demonstrate the potential of self-improving generative agents for continuous control tasks, paving the way for future AI-native network infrastructure.
format Preprint
id arxiv_https___arxiv_org_abs_2603_10564
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Adaptive RAN Slicing Control via Reward-Free Self-Finetuning Agents
Li, Yuanhao
Wang, Haozhe
Min, Geyong
Georgalas, Nektarios
Miao, Wang
Artificial Intelligence
Networking and Internet Architecture
The integration of Generative AI models into AI-native network systems offers a transformative path toward achieving autonomous and adaptive control. However, the application of such models to continuous control tasks is impeded by intrinsic architectural limitations, including finite context windows, the lack of explicit reward signals, and the degradation of the long context. This paper posits that the key to unlocking robust continuous control is enabling agents to internalize experience by distilling it into their parameters, rather than relying on prompt-based memory. To this end, we propose a novel self-finetuning framework that enables agentic systems to learn continuously through direct interaction with the environment, bypassing the need for handcrafted rewards. Our framework implements a bi-perspective reflection mechanism that generates autonomous linguistic feedback to construct preference datasets from interaction history. A subsequent preference-based fine-tuning process distills long-horizon experiences into the model's parameters. We evaluate our approach on a dynamic Radio Access Network (RAN) slicing task, a challenging multi-objective control problem that requires the resolution of acute trade-offs between spectrum efficiency, service quality, and reconfiguration stability under volatile network conditions. Experimental results show that our framework outperforms standard Reinforcement Learning (RL) baselines and existing Large Language Model (LLM)-based agents in sample efficiency, stability, and multi-metric optimization. These findings demonstrate the potential of self-improving generative agents for continuous control tasks, paving the way for future AI-native network infrastructure.
title Adaptive RAN Slicing Control via Reward-Free Self-Finetuning Agents
topic Artificial Intelligence
Networking and Internet Architecture
url https://arxiv.org/abs/2603.10564