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

Jun Gao, Changlong Yu, Wei Wang, Huan Zhao, Ruifeng Xu
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引用次数: 9

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.
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掩码填充:一种灵活有效的事件提取数据增强框架
我们提出了Mask-then-Fill,一个灵活有效的事件提取数据增强框架。我们的方法允许对文本进行更灵活的操作,因此可以在尽可能保持原始事件结构不变的情况下生成更多样化的数据。具体来说,它首先随机屏蔽一个附加句片段,然后用一个微调的填充模型填充一个可变长度的文本跨度。它的主要优点在于可以将文本中任意长度的片段替换为另一个可变长度的片段,而现有的方法只能替换单个单词或固定长度的片段。在触发器和参数提取任务上,所提出的框架比基线方法更有效,并且在低资源设置中显示出特别强的结果。我们进一步的分析表明,它在多样性和分布相似性之间取得了很好的平衡。
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