DRAGON: A Benchmark for Evidence-Grounded Visual Reasoning over Diagrams
Anirudh Iyengar Kaniyar Narayana Iyengar, Tampu Ravi Kumar, Gaurav Najpande, Manan Suri, Dinesh Manocha, Puneet Mathur, Vivek Gupta

TL;DR
DRAGON is a new benchmark dataset designed to evaluate models' ability to ground their answers in visual evidence within diagrams, addressing interpretability and reasoning reliability issues.
Contribution
It introduces a comprehensive dataset with annotated evidence regions across multiple diagram types and provides a standardized framework for evaluating evidence-grounded reasoning.
Findings
Eight vision-language models were evaluated on evidence localization.
Models show varying success in identifying visual evidence across diagram types.
DRAGON enables systematic assessment of diagram reasoning and evidence grounding.
Abstract
Diagram question answering (DQA) requires models to interpret structured visual representations such as charts, maps, infographics, circuit schematics, and scientific diagrams. Recent vision-language models (VLMs) often achieve high answer accuracy on these tasks, yet correct answers do not guarantee that models ground their reasoning in the diagram regions that support the prediction. Models may instead rely on textual correlations or dataset artifacts without identifying the visual evidence required to verify the answer. This limitation prevents reliable evaluation of diagram reasoning and reduces interpretability. We introduce DRAGON, a benchmark for evaluating evidence-grounded visual reasoning in diagrams. Given a diagram, a question, and the correct answer, a model must predict bounding boxes that correspond to the visual elements required to justify the answer. These evidence…
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