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Hauptverfasser: Monteiro, Juarez, Gavenski, Nathan, Zuin, Gianlucca, Veloso, Adriano
Format: Preprint
Veröffentlicht: 2026
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Online-Zugang:https://arxiv.org/abs/2604.02226
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author Monteiro, Juarez
Gavenski, Nathan
Zuin, Gianlucca
Veloso, Adriano
author_facet Monteiro, Juarez
Gavenski, Nathan
Zuin, Gianlucca
Veloso, Adriano
contents Reinforcement learning (RL) agents often struggle with out-of-distribution (OOD) scenarios, leading to high uncertainty and random behavior. While language models (LMs) contain valuable world knowledge, larger ones incur high computational costs, hindering real-time use, and exhibit limitations in autonomous planning. We introduce Adaptive Safety through Knowledge (ASK), which combines smaller LMs with trained RL policies to enhance OOD generalization without retraining. ASK employs Monte Carlo Dropout to assess uncertainty and queries the LM for action suggestions only when uncertainty exceeds a set threshold. This selective use preserves the efficiency of existing policies while leveraging the language model's reasoning in uncertain situations. In experiments on the FrozenLake environment, ASK shows no improvement in-domain, but demonstrates robust navigation in transfer tasks, achieving a reward of 0.95. Our findings indicate that effective neuro-symbolic integration requires careful orchestration rather than simple combination, highlighting the need for sufficient model scale and effective hybridization mechanisms for successful OOD generalization.
format Preprint
id arxiv_https___arxiv_org_abs_2604_02226
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle When to ASK: Uncertainty-Gated Language Assistance for Reinforcement Learning
Monteiro, Juarez
Gavenski, Nathan
Zuin, Gianlucca
Veloso, Adriano
Artificial Intelligence
Machine Learning
Reinforcement learning (RL) agents often struggle with out-of-distribution (OOD) scenarios, leading to high uncertainty and random behavior. While language models (LMs) contain valuable world knowledge, larger ones incur high computational costs, hindering real-time use, and exhibit limitations in autonomous planning. We introduce Adaptive Safety through Knowledge (ASK), which combines smaller LMs with trained RL policies to enhance OOD generalization without retraining. ASK employs Monte Carlo Dropout to assess uncertainty and queries the LM for action suggestions only when uncertainty exceeds a set threshold. This selective use preserves the efficiency of existing policies while leveraging the language model's reasoning in uncertain situations. In experiments on the FrozenLake environment, ASK shows no improvement in-domain, but demonstrates robust navigation in transfer tasks, achieving a reward of 0.95. Our findings indicate that effective neuro-symbolic integration requires careful orchestration rather than simple combination, highlighting the need for sufficient model scale and effective hybridization mechanisms for successful OOD generalization.
title When to ASK: Uncertainty-Gated Language Assistance for Reinforcement Learning
topic Artificial Intelligence
Machine Learning
url https://arxiv.org/abs/2604.02226