Closed-Loop Verbal Reinforcement Learning for Task-Level Robotic Planning

March 23, 2026 ยท Grace Period ยท + Add venue

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Authors Dmitrii Plotnikov, Iaroslav Kolomiets, Dmitrii Maliukov, Dmitrij Kosenkov, Daniia Zinniatullina, Artem Trandofilov, Georgii Gazaryan, Kirill Bogatikov, Timofei Kozlov, Igor Duchinskii, Mikhail Konenkov, Miguel Altamirano Cabrera, Dzmitry Tsetserukou arXiv ID 2603.22169 Category cs.RO: Robotics Citations 0
Abstract
We propose a new Verbal Reinforcement Learning (VRL) framework for interpretable task-level planning in mobile robotic systems operating under execution uncertainty. The framework follows a closed-loop architecture that enables iterative policy improvement through interaction with the physical environment. In our framework, executable Behavior Trees are repeatedly refined by a Large Language Model actor using structured natural-language feedback produced by a Vision-Language Model critic that observes the physical robot and execution traces. Unlike conventional reinforcement learning, policy updates in VRL occur directly at the symbolic planning level, without gradient-based optimization. This enables transparent reasoning, explicit causal feedback, and human-interpretable policy evolution. We validate the proposed framework on a real mobile robot performing a multi-stage manipulation and navigation task under execution uncertainty. Experimental results show that the framework supports explainable policy improvements, closed-loop adaptation to execution failures, and reliable deployment on physical robotic systems.
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