SMART: Relation-Aware Learning of Geometric Representations for Knowledge Graphs
Kossi Amouzouvi, Bowen Song, Andrea Coletta, Luigi Bellomarini, Jens Lehmann, Sahar Vahdati

TL;DR
This paper introduces a relation-aware framework for learning geometric representations in knowledge graphs, assigning relation-specific transformations to improve embedding quality and performance.
Contribution
It proposes a novel method to evaluate and assign the best geometric transformation to each relation, enhancing relation modeling in knowledge graph embeddings.
Findings
Achieves performance comparable to state-of-the-art models on benchmark datasets.
Effectively learns relation-specific transformations using an attention mechanism.
Demonstrates applicability on real-world financial knowledge graphs.
Abstract
Knowledge graph representation learning approaches provide a mapping between symbolic knowledge in the form of triples in a knowledge graph (KG) and their feature vectors. Knowledge graph embedding (KGE) models often represent relations in a KG as geometric transformations. Most state-of-the-art (SOTA) KGE models are derived from elementary geometric transformations (EGTs), such as translation, scaling, rotation, and reflection, or their combinations. These geometric transformations enable the models to effectively preserve specific structural and relational patterns of the KG. However, the current use of EGTs by KGEs remains insufficient without considering relation-specific transformations. Although recent models attempted to address this problem by ensembling SOTA baseline models in different ways, only a single or composite version of geometric transformations are used by such…
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Taxonomy
TopicsData Mining Algorithms and Applications · Rough Sets and Fuzzy Logic · Graph Theory and Algorithms
