Event Extraction as Machine Reading Comprehension

Jian Liu, Yubo Chen, Kang Liu, Wei Bi, Xiaojiang Liu

Information Extraction Long Paper

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Abstract: Event extraction (EE) is a crucial information extraction task that aims to extract event information in texts. Previous methods for EE typically model it as a classification task, which are usually prone to the data scarcity problem. In this paper, we propose a new learning paradigm of EE, by explicitly casting it as a machine reading comprehension problem (MRC). Our approach includes an unsupervised question generation process, which can transfer event schema into a set of natural questions, followed by a BERT-based question-answering process to retrieve answers as EE results. This learning paradigm enables us to strengthen the reasoning process of EE, by introducing sophisticated models in MRC, and relieve the data scarcity problem, by introducing the large-scale datasets in MRC. The empirical results show that: i) our approach attains state-of-the-art performance by considerable margins over previous methods. ii) Our model is excelled in the data-scarce scenario, for example, obtaining 49.8\% in F1 for event argument extraction with only 1\% data, compared with 2.2\% of the previous method. iii) Our model also fits with zero-shot scenarios, achieving $37.0\%$ and $16\%$ in F1 on two datasets without using any EE training data.
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