Relation extraction is the task of identifying relation instance between two entities given a corpus whereas Knowledge base modeling is the task of representing a knowledge base, in terms of relations between entities. This paper proposes an architecture for the relation extraction task that integrates semantic information with knowledge base modeling in a novel manner. Existing approaches for relation extraction either do not utilize knowledge base modelling or use separately trained KB models for the RE task. We present a model architecture that internalizes KB modeling in relation extraction. This model applies a novel approach to encode sentences into contextualized relation embeddings, which can then be used together with parameterized entity embeddings to score relation instances. The proposed CRE model achieves state of the art performance on datasets derived from The New York Times Annotated Corpus and FreeBase. The source code has been made available.
翻译:关系提取是确定两个实体之间的关系实例的任务,而知识基础建模是代表一个知识库的任务,涉及实体之间的关系。本文件提议一个将语义信息与知识库建模相结合的关系提取任务架构,以新颖的方式将语义信息与知识库建模结合起来。现有的关系提取方法要么不使用知识库建模,要么为RE任务使用经过单独培训的KB模型。我们提出了一个模型结构,将KB建模与提取相关关系建模内部化。这个模型采用新颖的方法将句子编码成背景化关系嵌入,然后与参数化实体嵌入关系模型一起用于评分。拟议的CRE模型实现了《纽约时报》附加说明公司和FreeBase的数据集的最新性能。提供了源代码。