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Learning to Ask for Data-Efficient Event Argument Extraction (2110.00479v1)
Published 1 Oct 2021 in cs.CL, cs.AI, cs.IR, and cs.LG
Abstract: Event argument extraction (EAE) is an important task for information extraction to discover specific argument roles. In this study, we cast EAE as a question-based cloze task and empirically analyze fixed discrete token template performance. As generating human-annotated question templates is often time-consuming and labor-intensive, we further propose a novel approach called "Learning to Ask," which can learn optimized question templates for EAE without human annotations. Experiments using the ACE-2005 dataset demonstrate that our method based on optimized questions achieves state-of-the-art performance in both the few-shot and supervised settings.
- Hongbin Ye (16 papers)
- Ningyu Zhang (148 papers)
- Zhen Bi (67 papers)
- Shumin Deng (65 papers)
- Chuanqi Tan (56 papers)
- Hui Chen (298 papers)
- Fei Huang (409 papers)
- Huajun Chen (198 papers)