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ScholarlyRead: A New Dataset for Scientific Article Reading Comprehension

机译:学术:用于科学文章阅读理解的新数据集

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We present ScholarlyRead, span-of-word-based scholarly articles' Reading Comprehension (RC) dataset with approximately 10K manually checked passage-question-answer instances. ScholarlyRead was constructed in semi-automatic way. We consider the articles from two popular journals of a reputed publishing house. Firstly, we generate questions from these articles in an automatic way. Generated questions are then manually checked by the human annotators. We propose a baseline model based on Bi-Directional Attention Flow (BiDAF) network that yields the F1 score of 37.31%. The framework would be useful for building Question-Answering (QA) systems on scientific articles.
机译:我们提供学术,基于Word的Spang-of-Word的学术文章的阅读理解(RC)DataSet,手动检查了大约10k段询 - 问答实例。 学术是以半自动的方式建造的。 我们考虑从一个知名出版社的两个受欢迎的期刊中的文章。 首先,我们以自动方式从这些文章中生成问题。 然后由人类注释器手动检查生成的问题。 我们提出了一种基于双向注意力(BIDAF)网络的基线模型,其产生F1得分为37.31%。 该框架对于在科学文章中建立问题答案(QA)系统有用。

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