Compared with traditional sentence-level relation extraction, document-level relation extraction is a more challenging task where an entity in a document may be mentioned multiple times and associated with multiple relations. However, most methods of document-level relation extraction do not distinguish between mention-level features and entity-level features, and just apply simple pooling operation for aggregating mention-level features into entity-level features. As a result, the distinct semantics between the different mentions of an entity are overlooked. To address this problem, we propose RSMAN in this paper which performs selective attentions over different entity mentions with respect to candidate relations. In this manner, the flexible and relation-specific representations of entities are obtained which indeed benefit relation classification. Our extensive experiments upon two benchmark datasets show that our RSMAN can bring significant improvements for some backbone models to achieve state-of-the-art performance, especially when an entity have multiple mentions in the document.
翻译:与传统的刑罚级关系提取相比,文件级关系提取是一项更具挑战性的任务,因为文件实体在文件中被多次提及并与多重关系相关,但文件级关系提取的大多数方法并不区分参考级特征和实体级特征,而只是应用简单的集合作业将参考级特征汇总为实体级特征。结果,一个实体不同名称之间的不同语义被忽略了。为了解决这一问题,我们建议本文件中的RSMAN对不同实体在候选人关系方面提及的内容有选择性地予以关注。这样,获得实体的灵活和具体关联的表述方式确实有利于关系分类。我们对两个基准数据集的广泛实验表明,我们的RSMAN可以大大改进一些骨干模型,以实现最先进的性能,特别是当一个实体在文件中多次提及时。