Vision-Language Models Do Not Understand Negation
2025

Kumail Alhamoud1, Shaden Alshammari1, Yonglong Tian2, Guohao Li3, Philip Torr3, Yoon Kim1, Marzyeh Ghassemi1

1 MIT 2 Google DeepMind 3 University of Oxford

Abstract

Many practical vision-language applications require models that understand negation, e.g., when using natural language to retrieve images which contain certain objects but not others. Despite advancements in vision-language models (VLMs) through large-scale training, their ability to comprehend negation remains underexplored. This study addresses the question: how well do current VLMs understand negation? We introduce NegBench, a new benchmark designed to evaluate negation understanding across 18 task variations and 79k examples spanning image, video, and medical datasets. The benchmark consists of two core tasks designed to evaluate negation understanding in diverse multimodal settings: Retrieval with Negation and Multiple Choice Questions with Negated Captions. Our evaluation reveals that modern VLMs struggle significantly with negation, often performing at chance level. To address these shortcomings, we explore a data-centric approach wherein we finetune CLIP models on large-scale synthetic datasets containing millions of negated captions. We show that this approach can result in a 10% increase in recall on negated queries and a 40% boost in accuracy on multiple-choice questions with negated captions.

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@article{ title = "Vision-Language Models Do Not Understand Negation", author = "Kumail Alhamoud and Shaden Alshammari and Yonglong Tian and Guohao Li and Philip Torr and Yoon Kim and Marzyeh Ghassemi", journal = "Preprint", year = 2024, url = "https://arxiv.org/abs/2501.09425" }