Chart Question Answering from Real-World Analytical Narratives
Reviewed by Pithpith:26X3L5VOopen to challenge →
classification
cs.CL
keywords
analyticalansweringchartdatasetlanguagenarrativesquestionreal-world
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We present a new dataset for chart question answering (CQA) constructed from visualization notebooks. The dataset features real-world, multi-view charts paired with natural language questions grounded in analytical narratives. Unlike prior benchmarks, our data reflects ecologically valid reasoning workflows. Benchmarking state-of-the-art multimodal large language models reveals a significant performance gap, with GPT-4.1 achieving an accuracy of 69.3%, underscoring the challenges posed by this more authentic CQA setting.
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