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Main Authors: van Sprang, Angela, Samson, Laurens, Lucic, Ana, Acar, Erman, Ghebreab, Sennay, Asano, Yuki M.
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2512.08923
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author van Sprang, Angela
Samson, Laurens
Lucic, Ana
Acar, Erman
Ghebreab, Sennay
Asano, Yuki M.
author_facet van Sprang, Angela
Samson, Laurens
Lucic, Ana
Acar, Erman
Ghebreab, Sennay
Asano, Yuki M.
contents We introduce two new benchmarks REST and REST+ (Render-Equivalence Stress Tests) to enable systematic evaluation of cross-modal inconsistency in multimodal large language models (MLLMs). MLLMs are trained to represent vision and language in the same embedding space, yet they cannot perform the same tasks in both modalities. Our benchmarks contain samples with the same semantic information in three modalities (image, text, mixed) and we show that state-of-the-art MLLMs cannot consistently reason over these different modalities. We evaluate 15 MLLMs and find that the degree of modality inconsistency varies substantially, even when accounting for problems with text recognition (OCR). Neither rendering text as image nor rendering an image as text solves the inconsistency. Even if OCR is correct, we find that visual characteristics (text colour and resolution, but not font) and the number of vision tokens have an impact on model performance. Finally, we find that our consistency score correlates with the modality gap between text and images, highlighting a mechanistic interpretation of cross-modal inconsistent MLLMs.
format Preprint
id arxiv_https___arxiv_org_abs_2512_08923
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Same Content, Different Answers: Cross-Modal Inconsistency in MLLMs
van Sprang, Angela
Samson, Laurens
Lucic, Ana
Acar, Erman
Ghebreab, Sennay
Asano, Yuki M.
Artificial Intelligence
We introduce two new benchmarks REST and REST+ (Render-Equivalence Stress Tests) to enable systematic evaluation of cross-modal inconsistency in multimodal large language models (MLLMs). MLLMs are trained to represent vision and language in the same embedding space, yet they cannot perform the same tasks in both modalities. Our benchmarks contain samples with the same semantic information in three modalities (image, text, mixed) and we show that state-of-the-art MLLMs cannot consistently reason over these different modalities. We evaluate 15 MLLMs and find that the degree of modality inconsistency varies substantially, even when accounting for problems with text recognition (OCR). Neither rendering text as image nor rendering an image as text solves the inconsistency. Even if OCR is correct, we find that visual characteristics (text colour and resolution, but not font) and the number of vision tokens have an impact on model performance. Finally, we find that our consistency score correlates with the modality gap between text and images, highlighting a mechanistic interpretation of cross-modal inconsistent MLLMs.
title Same Content, Different Answers: Cross-Modal Inconsistency in MLLMs
topic Artificial Intelligence
url https://arxiv.org/abs/2512.08923