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arxiv: 2602.06033 · v2 · pith:LL3SZFVDnew · submitted 2026-02-05 · 💻 cs.LG

Can Vision Language Models Learn Intuitive Physics from Interaction?

classification 💻 cs.LG
keywords modelsphysicalinteractionlearntasksenvironmentgeneralizeimprove
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Pre-trained vision language models do not have good intuitions about the physical world. Recent work has shown that supervised fine-tuning can improve model performance on simple physical tasks. However, fine-tuned models do not appear to learn robust physical rules that can generalize to new contexts. Based on research in cognitive science, we hypothesize that models need to interact with an environment to properly learn its physical dynamics. We train models that learn through interaction with a simulated environment using reinforcement learning. While learning from interaction allows models to improve their within-task performance, it fails to produce models with generalizable physical intuitions. We find that models trained on one task do not reliably generalize to related tasks, even if the tasks share visual statistics and physical principles, and regardless of whether the models are trained through interaction.

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