Learning Representations of Entities and Relations
Ivana Bala\v{z}evi\'c

TL;DR
This paper introduces new models for knowledge graph representation, including HypER, TuckER, and MuRP, which improve link prediction and capture semantic structures in geometric spaces, especially hyperbolic space.
Contribution
It presents three novel models—HypER, TuckER, and MuRP—that advance knowledge graph embedding techniques and provide a theoretical framework for understanding semantic encoding.
Findings
HypER outperforms ConvE in link prediction tasks.
TuckER achieves state-of-the-art results on standard datasets.
MuRP effectively models hierarchical relations in hyperbolic space.
Abstract
Encoding facts as representations of entities and binary relationships between them, as learned by knowledge graph representation models, is useful for various tasks, including predicting new facts, question answering, fact checking and information retrieval. The focus of this thesis is on (i) improving knowledge graph representation with the aim of tackling the link prediction task; and (ii) devising a theory on how semantics can be captured in the geometry of relation representations. Most knowledge graphs are very incomplete and manually adding new information is costly, which drives the development of methods which can automatically infer missing facts. The first contribution of this thesis is HypER, a convolutional model which simplifies and improves upon the link prediction performance of the existing convolutional state-of-the-art model ConvE and can be mathematically explained…
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Taxonomy
TopicsTopic Modeling · Advanced Graph Neural Networks · Data Quality and Management
MethodsTuckER
