Knowledge graphs are inherently incomplete. Therefore substantial research has been directed toward knowledge graph completion (KGC), i.e., predicting missing triples from the information represented in the knowledge graph (KG). KG embedding models (KGEs) have yielded promising results for KGC, yet any current KGE is incapable of: (1) fully capturing vital inference patterns (e.g., composition), (2) capturing prominent patterns jointly (e.g., hierarchy and composition), and (3) providing an intuitive interpretation of captured patterns. In this work, we propose ExpressivE, a fully expressive spatio-functional KGE that solves all these challenges simultaneously. ExpressivE embeds pairs of entities as points and relations as hyper-parallelograms in the virtual triple space $\mathbb{R}^{2d}$. This model design allows ExpressivE not only to capture a rich set of inference patterns jointly but additionally to display any supported inference pattern through the spatial relation of hyper-parallelograms, offering an intuitive and consistent geometric interpretation of ExpressivE embeddings and their captured patterns. Experimental results on standard KGC benchmarks reveal that ExpressivE is competitive with state-of-the-art KGEs and even significantly outperforms them on WN18RR.
翻译:知识图谱本质上是不完整的。因此,大量的研究方向放在了知识图谱补全(KGC)上,即从知识图谱(KG)中的信息中预测缺失的三元组。KG嵌入模型(KGEs)已经取得了有前途的KGC结果,然而,任何现有的KGE都无法完全捕获重要的推理模式(例如,组合),同时联合捕获显着的模式(例如,层次结构和组合),并提供捕获的模式的直观解释。在这项工作中,我们提出了ExpressivE,这是一个完全具有表现力的空间功能KGE,可以同时解决所有这些挑战。ExpressivE将实体对嵌入为点,并将关系嵌入为虚拟三元组空间$\mathbb{R}^{2d}$中的超平行四边形。这个模型设计不仅允许ExpressivE联合捕获丰富的推理模式,而且通过超平行四边形的空间关系展示任何支持的推理模式,提供了对ExpressivE嵌入及其捕获模式的直观一致的几何解释。对标准KGC基准测试的实验结果表明,ExpressivE在WN18RR上与最先进的KGEs相比具有竞争力,甚至表现优异。