2021
DOI: 10.48550/arxiv.2101.06400
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ComQA:Compositional Question Answering via Hierarchical Graph Neural Networks

Abstract: With the development of deep learning techniques and large scale datasets, the question answering (QA) systems have been quickly improved, providing more accurate and satisfying answers. However, current QA systems either focus on the sentence-level answer, i.e., answer selection, or phrase-level answer, i.e., machine reading comprehension. How to produce compositional answers has not been throughout investigated. In compositional question answering, the systems should assemble several supporting evidence from… Show more

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