AI RESEARCH

World Models Meet Language Models: On the Complementarity of Concrete and Abstract Reasoning

arXiv CS.CL

ArXi:2606.03603v1 Announce Type: cross World models and multimodal large language models (MLLMs) provide complementary capabilities for predicting future outcomes from static visual observations. World models can generate concrete visual rollouts of possible futures, while MLLMs can reason abstractly over questions, goals, and rules. However, generated rollouts are stochastic and may be visually plausible but task-incorrect, making it necessary to determine when visual simulation is useful, whether a rollout is credible, and how it should influence the final answer.