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Mask-then-Fill: A Flexible and Effective Data Augmentation Framework for Event Extraction

Authors :
Gao, Jun
Yu, Changlong
Wang, Wei
Zhao, Huan
Xu, Ruifeng
Publication Year :
2023

Abstract

We present Mask-then-Fill, a flexible and effective data augmentation framework for event extraction. Our approach allows for more flexible manipulation of text and thus can generate more diverse data while keeping the original event structure unchanged as much as possible. Specifically, it first randomly masks out an adjunct sentence fragment and then infills a variable-length text span with a fine-tuned infilling model. The main advantage lies in that it can replace a fragment of arbitrary length in the text with another fragment of variable length, compared to the existing methods which can only replace a single word or a fixed-length fragment. On trigger and argument extraction tasks, the proposed framework is more effective than baseline methods and it demonstrates particularly strong results in the low-resource setting. Our further analysis shows that it achieves a good balance between diversity and distributional similarity.<br />Comment: EMNLP 2022 (Findings)

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2301.02427
Document Type :
Working Paper