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Main Authors: Cai, Kunlin, Song, Rui, Zhang, Jinghuai, Zhang, Kaiyuan, Bodapati, Pranav, Yu, Alicia, Suya, Fnu, Rostami, Mohammad, Ma, Jiaqi, Tian, Yuan
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2605.27589
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author Cai, Kunlin
Song, Rui
Zhang, Jinghuai
Zhang, Kaiyuan
Bodapati, Pranav
Yu, Alicia
Suya, Fnu
Rostami, Mohammad
Ma, Jiaqi
Tian, Yuan
author_facet Cai, Kunlin
Song, Rui
Zhang, Jinghuai
Zhang, Kaiyuan
Bodapati, Pranav
Yu, Alicia
Suya, Fnu
Rostami, Mohammad
Ma, Jiaqi
Tian, Yuan
contents Video generation models are increasingly used as world simulators for tasks like driving and robotic manipulation. What matters in these settings is not whether a single video looks right, but whether the model's output changes when its input changes. We test this by giving a model two prompts describing the same scene with one physical detail varied, and checking whether the two videos diverge the way physics predicts. The wording difference between the prompts is small by design, since only one variable is changed, but the correct physical difference is not. A model that misses this can still produce two videos that each look plausible individually, and existing benchmarks score videos one at a time and cannot detect this failure. We introduce What-If World, 319 such prompt pairs built on real frames from nuScenes and DROID, organized by a taxonomy of six physical variables shared across driving and manipulation. Each pair is scored with APEO, a four-part rubric checking whether each video follows its prompt (Adherence), is physically consistent (Physics), preserves the shared scene (Environment), and ends in the correct difference (Outcome). Across nine state-of-the-art models, no system exceeds 52% on the paired score, and open-source models cluster near 28%. Every model tested fails on a large fraction of causal interventions, indicating substantial room before these models can reliably support action-conditioned simulation or model-based planning. Where models do score well, performance appears to track the visual prominence of the intervention rather than the tractability of its underlying physics. Some visually subtle interventions score as low as 14.2%, while visually pronounced ones reach 40.4%.
format Preprint
id arxiv_https___arxiv_org_abs_2605_27589
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle What-If World: A Causal Benchmark for General World Models in Embodied Scenarios
Cai, Kunlin
Song, Rui
Zhang, Jinghuai
Zhang, Kaiyuan
Bodapati, Pranav
Yu, Alicia
Suya, Fnu
Rostami, Mohammad
Ma, Jiaqi
Tian, Yuan
Computer Vision and Pattern Recognition
Video generation models are increasingly used as world simulators for tasks like driving and robotic manipulation. What matters in these settings is not whether a single video looks right, but whether the model's output changes when its input changes. We test this by giving a model two prompts describing the same scene with one physical detail varied, and checking whether the two videos diverge the way physics predicts. The wording difference between the prompts is small by design, since only one variable is changed, but the correct physical difference is not. A model that misses this can still produce two videos that each look plausible individually, and existing benchmarks score videos one at a time and cannot detect this failure. We introduce What-If World, 319 such prompt pairs built on real frames from nuScenes and DROID, organized by a taxonomy of six physical variables shared across driving and manipulation. Each pair is scored with APEO, a four-part rubric checking whether each video follows its prompt (Adherence), is physically consistent (Physics), preserves the shared scene (Environment), and ends in the correct difference (Outcome). Across nine state-of-the-art models, no system exceeds 52% on the paired score, and open-source models cluster near 28%. Every model tested fails on a large fraction of causal interventions, indicating substantial room before these models can reliably support action-conditioned simulation or model-based planning. Where models do score well, performance appears to track the visual prominence of the intervention rather than the tractability of its underlying physics. Some visually subtle interventions score as low as 14.2%, while visually pronounced ones reach 40.4%.
title What-If World: A Causal Benchmark for General World Models in Embodied Scenarios
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2605.27589