Sequence Generation with Label Augmentation for Relation Extraction

29 Dec 2022  ·  Bo Li, Dingyao Yu, Wei Ye, Jinglei Zhang, Shikun Zhang ·

Sequence generation demonstrates promising performance in recent information extraction efforts, by incorporating large-scale pre-trained Seq2Seq models. This paper investigates the merits of employing sequence generation in relation extraction, finding that with relation names or synonyms as generation targets, their textual semantics and the correlation (in terms of word sequence pattern) among them affect model performance. We then propose Relation Extraction with Label Augmentation (RELA), a Seq2Seq model with automatic label augmentation for RE. By saying label augmentation, we mean prod semantically synonyms for each relation name as the generation target. Besides, we present an in-depth analysis of the Seq2Seq model's behavior when dealing with RE. Experimental results show that RELA achieves competitive results compared with previous methods on four RE datasets.

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Results from the Paper


Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
Relation Extraction Google RE RELA F1 93.9 # 1
Relation Extraction sciERC-sent RELA F1 90.3 # 1
Relation Extraction SemEval-2010 Task-8 RELA F1 90.4 # 6
Relation Extraction TACRED RELA F1 71.2 # 19

Methods