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Seeing Through the MiRAGE: Evaluating Multimodal Retrieval Augmented Generation

28 October 2025
Alexander Martin
William Walden
Reno Kriz
Dengjia Zhang
Kate Sanders
Eugene Yang
Chihsheng Jin
Benjamin Van Durme
ArXiv (abs)PDFHTMLGithub
Main:8 Pages
10 Figures
Bibliography:4 Pages
10 Tables
Appendix:13 Pages
Abstract

We introduce MiRAGE, an evaluation framework for retrieval-augmented generation (RAG) from multimodal sources. As audiovisual media becomes a prevalent source of information online, it is essential for RAG systems to integrate information from these sources into generation. However, existing evaluations for RAG are text-centric, limiting their applicability to multimodal, reasoning intensive settings because they don't verify information against sources. MiRAGE is a claim-centric approach to multimodal RAG evaluation, consisting of InfoF1, evaluating factuality and information coverage, and CiteF1, measuring citation support and completeness. We show that MiRAGE, when applied by humans, strongly aligns with extrinsic quality judgments. We additionally introduce automatic variants of MiRAGE and three prominent TextRAG metrics -- ACLE, ARGUE, and RAGAS -- demonstrating the limitations of text-centric work and laying the groundwork for automatic evaluation. We release open-source implementations and outline how to assess multimodal RAG.

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