Abstract

Knowledge graph (KG) embedding aims at embedding entities and relations in a KG into a lowdimensional latent representation space. Existing KG embedding approaches model entities andrelations in a KG by utilizing real-valued , complex-valued, or hypercomplex-valued (Quaternionor Octonion) representations, all of which are subsumed into a geometric algebra. In this work,we introduce a novel geometric algebra-based KG embedding framework, GeomE, which uti-lizes multivector representations and the geometric product to model entities and relations. Ourframework subsumes several state-of-the-art KG embedding approaches and is advantageouswith its ability of modeling various key relation patterns, including (anti-)symmetry, inversionand composition, rich expressiveness with higher degree of freedom as well as good general-ization capacity. Experimental results on multiple benchmark knowledge graphs show that theproposed approach outperforms existing state-of-the-art models for link prediction.

Highlights

  • Knowledge graphs (KGs) are directed graphs where nodes represent entities and edges represent the types of relationships among entities

  • We propose a novel KG embedding approach, GeomE, which is based on Clifford multivectors and the geometric product

  • Experimental results demonstrate that our approach achieves state-of-the-art results on four wellknown KG benchmarks, i.e., WN18, FB15K, WN18RR, and FB15K-237

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Summary

Introduction

Knowledge graphs (KGs) are directed graphs where nodes represent entities and (labeled) edges represent the types of relationships among entities. This can be represented as a collection of triples (h, r, t), each representing a relation r between a ”head-entity” h and an ”tail-entity” t. Embedding KGs into a low-dimensional space and learning latent representations of entities and relations in KGs is an effective solution for this task. Most existing KG embedding models learn to embed KGs by optimizing a scoring function which assigns higher scores to true facts than invalid ones

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