Proceedings of the Twentieth International Conference on Principles of Knowledge Representation and Reasoning 2023
DOI: 10.24963/kr.2023/62
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Explainable Representations for Relation Prediction in Knowledge Graphs

Abstract: Knowledge graphs represent real-world entities and their relations in a semantically-rich structure supported by ontologies. Exploring this data with machine learning methods often relies on knowledge graph embeddings, which produce latent representations of entities that preserve structural and local graph neighbourhood properties, but sacrifice explainability. However, in tasks such as link or relation prediction, understanding which specific features better explain a relation is crucial to support complex o… Show more

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