English

Can GPT-4 Models Detect Misleading Visualizations?

Computer Vision and Pattern Recognition 2025-05-23 v1 Computers and Society Social and Information Networks

Abstract

The proliferation of misleading visualizations online, particularly during critical events like public health crises and elections, poses a significant risk. This study investigates the capability of GPT-4 models (4V, 4o, and 4o mini) to detect misleading visualizations. Utilizing a dataset of tweet-visualization pairs containing various visual misleaders, we test these models under four experimental conditions with different levels of guidance. We show that GPT-4 models can detect misleading visualizations with moderate accuracy without prior training (naive zero-shot) and that performance notably improves when provided with definitions of misleaders (guided zero-shot). However, a single prompt engineering technique does not yield the best results for all misleader types. Specifically, providing the models with misleader definitions and examples (guided few-shot) proves more effective for reasoning misleaders, while guided zero-shot performs better for design misleaders. This study underscores the feasibility of using large vision-language models to detect visual misinformation and the importance of prompt engineering for optimized detection accuracy.

Cite

@article{arxiv.2408.12617,
  title  = {Can GPT-4 Models Detect Misleading Visualizations?},
  author = {Jason Alexander and Priyal Nanda and Kai-Cheng Yang and Ali Sarvghad},
  journal= {arXiv preprint arXiv:2408.12617},
  year   = {2025}
}

Comments

5 pages, 2 figures; accepted by IEEE VIS 2024 (https://ieeevis.org/year/2024/program/paper_v-short-1177.html)

R2 v1 2026-06-28T18:21:11.969Z