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Answering questions by learning to rank - Learning to rank by answering questions

机译:通过学习排名来回答问题-通过回答问题来学习排名

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Answering multiple-choice questions in a setting in which no supporting documents are explicitly provided continues to stand as a core problem in natural language processing The contribution of this article is two-fold. First, it describes a method which can be used to semantically rank documents extracted from Wikipedia or similar natural language corpora. Second, we propose a model employing the semantic ranking that holds the first place in two of the most popular leaderboards for answering multiple-choice questions: ARC Easy and Challenge. To achieve mis, we introduce a self-attention based neural network that latently learns to rank documents by their importance related to a given question, whilst optimizing the objective of predicting the correct answer. These documents are considered relevant contexts for the underlying question. We have published the ranked documents so that they can be used off-the-shelf to improve downstream decision models.
机译:在没有明确提供支持文件的设置中回答多项选择题继续作为自然语言处理中的核心问题,本文的贡献是两倍。首先,它描述了一种可以用于从维基百科或类似的自然语言学习中提取的语义上排名的方法。其次,我们提出了一种模型,采用语义排名,其中包含两个最受欢迎的排行榜中的第一名,用于回答多项选择题:弧容易和挑战。为了实现MIS,我们介绍了一个基于自我关注的神经网络,潜伏地学习通过与给定的问题相关的重要性,同时优化预测正确答案的目标。这些文件被视为相关问题的相关背景。我们发布了排名的文件,以便他们可以从架子上使用,以改善下游决策模型。

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