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Learning to Ask Unanswerable Questions for Machine Reading Comprehension

机译:学会提出关于机器阅读理解的无法回答的问题

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Machine reading comprehension with unanswerable questions is a challenging task. In this work, we propose a data augmentation technique by automatically generating relevant unanswerable questions according to an answerable question paired with its corresponding paragraph that contains the answer. We introduce a pair-to-sequence model for unanswerable question generation, which effectively captures the interactions between the question and the paragraph. We also present a way to construct training data for our question generation models by leveraging the existing reading comprehension dataset. Experimental results show that the pair-to-sequence model performs consistently better compared with the sequence-to-sequence baseline. We further use the automatically generated unanswerable questions as a means of data augmentation on the SQuAD 2.0 dataset, yielding 1.9 absolute F1 improvement with BERT-base model and 1.7 absolute F1 improvement with BERT-large model.
机译:机器阅读理解与无法回答的问题是一项具有挑战性的任务。在这项工作中,我们提出了一种数据增强技术,该方法是根据一个可回答问题及其包含答案的相应段落配对,自动生成相关的无法回答的问题。我们引入了成对顺序模型以解决无法回答的问题,该模型有效地捕获了问题和段落之间的交互作用。我们还提出了一种利用现有阅读理解数据集为我们的问题生成模型构建训练数据的方法。实验结果表明,与序列对基线相比,对序列模型的性能始终更好。我们进一步使用自动生成的无法回答的问题作为SQuAD 2.0数据集上数据增强的一种方式,使用BERT-Base模型获得1.9的绝对F1改善,使用BERT-large模型获得1.7的绝对F1改善。

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