基于视角转移网络的少镜头关系三重提取

Junbo Fei, Weixin Zeng, Xiang Zhao, Xuanyi Li, W. Xiao
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引用次数: 2

摘要

少射关系三重抽取(few -shot Relational Triple Extraction, RTE)的目的是在少量标记样本的支持下,从非结构化文本中检测新出现的关系类型及其实体对。现有技术使用条件随机场或最近邻匹配策略提取实体,使用原型网络从句子中提取关系。然而,他们没有利用三层信息来验证提取的关系三元组的合理性,也忽略了实体、关系和三元组之间的适当转换。为了填补这些空白,本文提出了一种新的视角转移网络(PTN)来解决少射RTE问题。具体来说,PTN从关系的角度出发,检查给定关系的存在性。然后,它转移到实体透视图,以定位具有特定于关系的支持集的实体跨度。接下来,转换到三元组透视图,以验证提取的关系三元组的合理性。最后,它转换回关系透视图以检查下一个关系,并重复上述过程。通过在关系、实体和三元组的透视图之间转换,PTN不仅在局部和全局级别验证提取的元素,而且还有效地处理更现实和更困难的少量RTE场景,例如多个三元组提取和三元组不存在。在现有数据集和新数据集上的大量实验结果表明,我们的方法可以显着提高性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Few-Shot Relational Triple Extraction with Perspective Transfer Network
Few-shot Relational Triple Extraction (RTE) aims at detecting emerging relation types along with their entity pairs from unstructured text with the support of a few labeled samples. Prior arts use conditional random field or nearest-neighbor matching strategy to extract entities and use prototypical networks for extracting relations from sentences. Nevertheless, they fail to utilize the triple-level information to verify the plausibility of extracted relational triples, and ignore the proper transfer among the perspectives of entity, relation and triple. To fill in these gaps, in this work, we put forward a novel perspective transfer network (PTN) to address few-shot RTE. Specifically, PTN starts from the relation perspective by checking the existence of a given relation. Then, it transfers to the entity perspective to locate entity spans with relation-specific support sets. Next, it transfers to the triple perspective to validate the plausibility of extracted relational triples. Finally, it transfers back to the relation perspective to check the next relation, and repeats the aforementioned procedure. By transferring among the perspectives of relation, entity, and triple, PTN not only validates the extracted elements at both local and global levels, but also effectively handles more realistic and difficult few-shot RTE scenarios such as multiple triple extraction and nonexistence of triples. Extensive experimental results on existing dataset and new datasets demonstrate that our approach can significantly improve performance over the state-of-the-arts.
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