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CORE: Cyclic Orthotope Relation Embedding for Knowledge Graph Completion

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Knowledge graph completion (KGC) aims to automatically infer missing facts in multi-relational data by mapping entities and relations into continuous representation spaces. Recent region-based embedding models have shown great promise in capturing complex logical patterns by representing relations as geometric regions. However, these models inevitably suffer from absolute boundary constraints during optimization. Conversely, without such constraints, relation regions expand indefinitely. To address the limitation, we propose \textbf{CORE} (Cyclic Orthotope Relation Embedding), a novel KGC model that embeds entities and relations onto a boundary-less torus manifold.CORE represents relations as cyclic orthotopes on the torus manifold, allowing regions to seamlessly wrap around spatial boundaries to ensure smooth gradient conduction. Furthermore, an adaptive width regularization is introduced to prevent unconditional region expansion. Theoretical analysis proves that CORE can capture various complex relation patterns such as subsumption and intersection. Extensive experiments on four benchmark datasets demonstrate that CORE achieves highly competitive performance, significantly improving link prediction accuracy in dense semantic environments.

Yingqi Zeng, Luying Wang, Huiling Zhu• 2026

Related benchmarks

TaskDatasetResultRank
Link PredictionFB15k-237
MRR35.1
342
Link PredictionWN18RR
Hits@1057.5
219
Link PredictionFB15k
Hits@1089.1
103
Link PredictionWN18
Hits@1096.7
90
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