We investigate the knowledge graph entity typing task which aims at inferring plausible entity types. In this paper, we propose a novel Transformer-based Entity Typing (TET) approach, effectively encoding the content of neighbors of an entity. More precisely, TET is composed of three different mechanisms: a local transformer allowing to infer missing types of an entity by independently encoding the information provided by each of its neighbors; a global transformer aggregating the information of all neighbors of an entity into a single long sequence to reason about more complex entity types; and a context transformer integrating neighbors content based on their contribution to the type inference through information exchange between neighbor pairs. Furthermore, TET uses information about class membership of types to semantically strengthen the representation of an entity. Experiments on two real-world datasets demonstrate the superior performance of TET compared to the state-of-the-art.
翻译:我们调查了知识图实体打字任务,目的是推断出可信的实体类型。在本文中,我们提出了一个新的基于变换器的实体打字(TET)方法,有效地将实体的邻居内容编码。更准确地说,TET由三个不同的机制组成:一个当地变压器,允许通过将每个邻居提供的信息独立编码来推断一个实体的缺失类型;一个全球变压器,将一个实体的所有邻居的信息集中成一个单长的序列,以解释更复杂的实体类型;以及一个背景变压器,根据邻居对类型推断的贡献,通过邻居对类型交换信息。此外,TET利用关于类别类别成员的信息,从字面上加强一个实体的代表性。两个真实世界数据集的实验表明,与最新技术相比,TET的绩效优于最新数据组。