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Question Answering with Long Multiple-Span Answers

Ming Zhu, Aman Ahuja, Da-Cheng Juan, Wei Wei, Chandan K. Reddy

202055 citationsDOIOpen Access PDF

Abstract

Answering questions in many real-world applications often requires complex and precise information excerpted from texts spanned across a long document. However, currently no such annotated dataset is publicly available, which hinders the development of neural questionanswering (QA) systems. To this end, we present MASH-QA 1 , a Multiple Answer Spans Healthcare Question Answering dataset from the consumer health domain, where answers may need to be excerpted from multiple, nonconsecutive parts of text spanned across a long document. We also propose MultiCo, a neural architecture that is able to capture the relevance among multiple answer spans, by using a query-based contextualized sentence selection approach, for forming the answer to the given question. We also demonstrate that conventional QA models are not suitable for this type of task and perform poorly in this setting. Extensive experiments are conducted, and the experimental results confirm the proposed model significantly outperforms the state-of-the-art QA models in this multispan QA setting.

Topics & Concepts

Question answeringComputer scienceRelevance (law)Information retrievalTask (project management)SentenceSelection (genetic algorithm)Domain (mathematical analysis)Artificial intelligenceArchitectureNatural language processingSpan (engineering)EngineeringLawMathematicsEconomicsArtCivil engineeringVisual artsMathematical analysisPolitical scienceManagementTopic ModelingNatural Language Processing TechniquesMultimodal Machine Learning Applications