Jiangqi Zhu
2022
DocEE: A Large-Scale and Fine-grained Benchmark for Document-level Event Extraction
MeiHan Tong
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Bin Xu
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Shuai Wang
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Meihuan Han
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Yixin Cao
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Jiangqi Zhu
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Siyu Chen
|
Lei Hou
|
Juanzi Li
Proceedings of the 2022 Conference of the North American Chapter of the Association for Computational Linguistics: Human Language Technologies
Event extraction aims to identify an event and then extract the arguments participating in the event. Despite the great success in sentence-level event extraction, events are more naturally presented in the form of documents, with event arguments scattered in multiple sentences. However, a major barrier to promote document-level event extraction has been the lack of large-scale and practical training and evaluation datasets. In this paper, we present DocEE, a new document-level event extraction dataset including 27,000+ events, 180,000+ arguments. We highlight three features: large-scale manual annotations, fine-grained argument types and application-oriented settings. Experiments show that there is still a big gap between state-of-the-art models and human beings (41% Vs 85% in F1 score), indicating that DocEE is an open issue. DocEE is now available at https://github.com/tongmeihan1995/DocEE.git.
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Co-authors
- Meihan Tong 1
- Bin Xu 1
- Shuai Wang 1
- Meihuan Han 1
- Yixin Cao 1
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