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Calling Attention to Passages for Biomedical Question Answering

机译:提醒注意生物医学问题解答的通道

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Question answering can be described as retrieving relevant information for questions expressed in natural language, possibly also generating a natural language answer. This paper presents a pipeline for document and passage retrieval for biomedical question answering built around a new variant of the DeepRank network model in which the recursive layer is replaced by a self-attention layer combined with a weighting mechanism. This adaptation halves the total number of parameters and makes the network more suited for identifying the relevant passages in each document. The overall retrieval system was evaluated on the BioASQ tasks 6 and 7, achieving similar retrieval performance when compared to more complex network architectures.
机译:问题回答可以描述为检索以自然语言表达的问题的相关信息,也可能会生成自然语言的答案。本文介绍了围绕DeepRank网络模型的新变种构建的,用于生物医学问答的文档和段落检索的管道,其中递归层被结合了加权机制的自注意层代替。这种调整将参数的总数减半,并使网络更适合于识别每个文档中的相关段落。与更复杂的网络体系结构相比,对整个检索系统进行了BioASQ任务6和7的评估,获得了相似的检索性能。

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