RotatE: Knowledge Graph Embedding by Relational Rotation in Complex Space
Peking University · Université de Montréal
Abstract
We study the problem of learning representations of entities and relations in knowledge graphs for predicting missing links. The success of such a task heavily relies on the ability of modeling and inferring the patterns of (or between) the relations. In this paper, we present a new approach for knowledge graph embedding called RotatE, which is able to model and infer various relation patterns including: symmetry/antisymmetry, inversion, and composition. Specifically, the RotatE model defines each relation as a rotation from the source entity to the target entity in the complex vector space. In addition, we propose a novel self-adversarial negative sampling technique for efficiently and effectively training…
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Authors
4Topics & keywords
- Embedding
- Antisymmetry
- Computer science
- Knowledge graph
- Scalability
- Relation (database)
- Theoretical computer science
- Adversarial system