AI RESEARCH
Towards Self-Explainable Document Visual Question Answering with Chain-of-Explanation Predictions
arXiv CS.LG
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ArXi:2605.06058v1 Announce Type: new Document Visual Question Answering (DocVQA) requires vision-language models to reason not only about what information in a document is relevant to a question, but also where the answer is grounded on the page. Existing DocVQA models entangle question-relevant evidence and answer localization and operate largely as black boxes, offering limited means to verify how predictions depend on visual evidence. We propose CoExVQA, a self-explainable DocVQA framework with a grounded reasoning process through a chain-of-explanation design.