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3 months ago

Knowledge Graph Embedding with 3D Compound Geometric Transformations

Xiou Ge Yun-Cheng Wang Bin Wang C.-C. Jay Kuo

Knowledge Graph Embedding with 3D Compound Geometric Transformations

Abstract

The cascade of 2D geometric transformations were exploited to model relations between entities in a knowledge graph (KG), leading to an effective KG embedding (KGE) model, CompoundE. Furthermore, the rotation in the 3D space was proposed as a new KGE model, Rotate3D, by leveraging its non-commutative property. Inspired by CompoundE and Rotate3D, we leverage 3D compound geometric transformations, including translation, rotation, scaling, reflection, and shear and propose a family of KGE models, named CompoundE3D, in this work. CompoundE3D allows multiple design variants to match rich underlying characteristics of a KG. Since each variant has its own advantages on a subset of relations, an ensemble of multiple variants can yield superior performance. The effectiveness and flexibility of CompoundE3D are experimentally verified on four popular link prediction datasets.

Code Repositories

hughxiouge/CompoundE3D
pytorch
Mentioned in GitHub

Benchmarks

BenchmarkMethodologyMetrics
link-property-prediction-on-ogbl-wikikg2CompoundE3D
Ext. data: No
Number of params: 750662700
Test MRR: 0.7006 ± 0.0011
Validation MRR: 0.7175 ± 0.0015

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Knowledge Graph Embedding with 3D Compound Geometric Transformations | Papers | HyperAI