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Recovering Question Answering Errors via Query Revision

机译:通过查询修订恢复问答错误

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The existing factoid QA systems often lack a post-inspection component that can help models recover from their own mistakes. In this work, we propose to crosscheck the corresponding KB relations behind the predicted answers and identify potential inconsistencies. Instead of developing a new model that accepts evidences collected from these relations, we choose to plug them back to the original questions directly and check if the revised question makes sense or not A bidirectional LSTM is applied to encode revised questions. We develop a scoring mechanism over the revised question encodings to refine the predictions of a base QA system. This approach can improve the F+1 score of Stagg (Yih et al., 2015), one of the leading QA systems, from 52.5% to 53 9% on WebQuestions data.
机译:现有的事实型QA系统通常缺少检查后组件,该组件可以帮助模型从自身的错误中恢复。在这项工作中,我们建议对预期答案后面的对应KB关系进行交叉检查,并确定潜在的不一致之处。与其开发一个新模型来接受从这些关系中收集到的证据,不如选择将它们直接插入原始问题,并检查修改后的问题是否有意义。将双向LSTM应用于编码修改后的问题。我们针对修订后的问题编码开发了一种评分机制,以完善基本质量检查系统的预测。这种方法可以将领先的质量检查系统之一Stagg的F + 1评分(Yih等人,2015)提高到WebQuestions数据上的52.5%到53 9%。

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