Jui-I Wang
2025
MESAQA: A Dataset for Multi-Span Contextual and Evidence-Grounded Question Answering
Jui-I Wang
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Hen-Hsen Huang
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Hsin-Hsi Chen
Proceedings of the 31st International Conference on Computational Linguistics
We introduce MESAQA, a novel dataset focusing on multi-span contextual understanding question answering (QA).Unlike traditional single-span QA systems, questions in our dataset consider information from multiple spans within the context document. MESAQA supports evidence-grounded QA, demanding the model’s capability of answer generation and multi-evidence identification. Our automated dataset creation method leverages the MASH-QA dataset and large language models (LLMs) to ensure that each Q/A pair requires considering all selected spans. Experimental results show that current models struggle with multi-span contextual QA, underscoring the need for new approaches. Our dataset sets a benchmark for this emerging QA paradigm, promoting research in complex information retrieval and synthesis.