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Autori principali: Tahmasbi, Amir, Majidi, Sadegh, Taram, Kazem, Bera, Aniket
Natura: Preprint
Pubblicazione: 2025
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Accesso online:https://arxiv.org/abs/2512.24532
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author Tahmasbi, Amir
Majidi, Sadegh
Taram, Kazem
Bera, Aniket
author_facet Tahmasbi, Amir
Majidi, Sadegh
Taram, Kazem
Bera, Aniket
contents Spatial reasoning in large language models (LLMs) has gained increasing attention due to applications in navigation and planning. Despite strong general language capabilities, LLMs still struggle with spatial transformations and multi-step planning in structured environments. We propose a two-stage approach that decomposes spatial reasoning into atomic building blocks and their composition. First, we apply supervised fine-tuning on elementary spatial transformations, such as rotation, translation, and scaling, to equip the model with basic spatial physics. We then freeze this physics-aware model and train lightweight LoRA adapters within the GRPO framework to learn policies that compose these building blocks for multi-step planning in puzzle-based environments, in a closed-loop manner. To support this pipeline, we synthesize an ASCII-art dataset and construct a corresponding ASCII-based reinforcement learning environment. Our method consistently outperforms baselines, including the generic backbone, physics-aware model, and end-to-end RL models, under both Dynamic environments with explicit state updates and Static environments where the model must rely on its internal state across steps. In addition, the proposed approach converges faster and exhibits more stable training compared to end-to-end reinforcement learning from scratch. Finally, we analyze attention patterns to assess whether fine-tuning induces meaningful improvements in spatial understanding.
format Preprint
id arxiv_https___arxiv_org_abs_2512_24532
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle From Building Blocks to Planning: Multi-Step Spatial Reasoning in LLMs with Reinforcement Learning
Tahmasbi, Amir
Majidi, Sadegh
Taram, Kazem
Bera, Aniket
Artificial Intelligence
Computation and Language
Spatial reasoning in large language models (LLMs) has gained increasing attention due to applications in navigation and planning. Despite strong general language capabilities, LLMs still struggle with spatial transformations and multi-step planning in structured environments. We propose a two-stage approach that decomposes spatial reasoning into atomic building blocks and their composition. First, we apply supervised fine-tuning on elementary spatial transformations, such as rotation, translation, and scaling, to equip the model with basic spatial physics. We then freeze this physics-aware model and train lightweight LoRA adapters within the GRPO framework to learn policies that compose these building blocks for multi-step planning in puzzle-based environments, in a closed-loop manner. To support this pipeline, we synthesize an ASCII-art dataset and construct a corresponding ASCII-based reinforcement learning environment. Our method consistently outperforms baselines, including the generic backbone, physics-aware model, and end-to-end RL models, under both Dynamic environments with explicit state updates and Static environments where the model must rely on its internal state across steps. In addition, the proposed approach converges faster and exhibits more stable training compared to end-to-end reinforcement learning from scratch. Finally, we analyze attention patterns to assess whether fine-tuning induces meaningful improvements in spatial understanding.
title From Building Blocks to Planning: Multi-Step Spatial Reasoning in LLMs with Reinforcement Learning
topic Artificial Intelligence
Computation and Language
url https://arxiv.org/abs/2512.24532