Knowledge graph embedding closed under composition

Author:

Zheng Zhuoxun,Zhou Baifan,Yang Hui,Tan Zhipeng,Sun Zequn,Li Chunnong,Waaler Arild,Kharlamov Evgeny,Soylu Ahmet

Abstract

AbstractKnowledge Graph Embedding (KGE) has attracted increasing attention. Relation patterns, such as symmetry and inversion, have received considerable focus. Among them, composition patterns are particularly important, as they involve nearly all relations in KGs. However, prior KGE approaches often consider relations to be compositional only if they are well-represented in the training data. Consequently, it can lead to performance degradation, especially for under-represented composition patterns. To this end, we propose HolmE, a general form of KGE with its relation embedding space closed under composition, namely that the composition of any two given relation embeddings remains within the embedding space. This property ensures that every relation embedding can compose, or be composed by other relation embeddings. It enhances HolmE’s capability to model under-represented (also called long-tail) composition patterns with limited learning instances. To our best knowledge, our work is pioneering in discussing KGE with this property of being closed under composition. We provide detailed theoretical proof and extensive experiments to demonstrate the notable advantages of HolmE in modelling composition patterns, particularly for long-tail patterns. Our results also highlight HolmE’s effectiveness in extrapolating to unseen relations through composition and its state-of-the-art performance on benchmark datasets.

Funder

EU project OntoCommons

EU project Dome 4.0

EU project DataCloud

EU project Graph Massiviser

EU project EnRichMyData

EU project SMARTEDGE

Norwegian Research Council funded project

University of Oslo

Publisher

Springer Science and Business Media LLC

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