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A Neural Question Answering Model Based on Semi-Structured Tables

机译:基于半结构表的神经问题应答模型

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Most question answering (QA) systems are based on raw text and struetured knowledge graph. However, raw text corpora are hard for QA system to understand, and structured knowledge graph needs intensive manual work, while it is relatively easy to obtain semi-structurcd tables from many sources directly, or build them automatically. In this paper, we build an end-to-end system to answer multiple choice questions with semi-structured tables as its knowledge. Our system answers queries by two steps. First, it finds the most similar tables. Then the system measures the relevance between each question and candidate table cells, and choose the most related cell as the source of answer. The system is evaluated with TabMCQ dataset, and gets a huge improvement compared to the state of the art.
机译:大多数问题应答(QA)系统基于原始文本和斯特鲁维格知识图。但是,原始文本语料库很难理解,结构化知识图需要密集的手动工作,而直接从许多来源获得半结构性桌子相对容易,或自动构建它们。在本文中,我们构建了一个端到端系统,以回答多个选择题,以半结构表作为其知识。我们的系统通过两个步骤答案。首先,它找到了最相似的表格。然后系统测量每个问题和候选表单元格之间的相关性,并选择最多相关的单元格作为答案源。与TabMCQ数据集进行评估系统,与本领域的状态相比获得了巨大的改进。

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