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Papers/Rot-Pro: Modeling Transitivity by Projection in Knowledge ...

Rot-Pro: Modeling Transitivity by Projection in Knowledge Graph Embedding

Tengwei Song, Jie Luo, Lei Huang

2021-10-27NeurIPS 2021 12Knowledge GraphsKnowledge Graph EmbeddingGraph EmbeddingLink Prediction
PaperPDFCodeCode(official)

Abstract

Knowledge graph embedding models learn the representations of entities and relations in the knowledge graphs for predicting missing links (relations) between entities. Their effectiveness are deeply affected by the ability of modeling and inferring different relation patterns such as symmetry, asymmetry, inversion, composition and transitivity. Although existing models are already able to model many of these relations patterns, transitivity, a very common relation pattern, is still not been fully supported. In this paper, we first theoretically show that the transitive relations can be modeled with projections. We then propose the Rot-Pro model which combines the projection and relational rotation together. We prove that Rot-Pro can infer all the above relation patterns. Experimental results show that the proposed Rot-Pro model effectively learns the transitivity pattern and achieves the state-of-the-art results on the link prediction task in the datasets containing transitive relations.

Results

TaskDatasetMetricValueModel
Link PredictionYAGO3-10Hits@10.443Rot-Pro
Link PredictionYAGO3-10Hits@100.699Rot-Pro
Link PredictionYAGO3-10Hits@30.596Rot-Pro
Link PredictionYAGO3-10MRR0.542Rot-Pro
Link PredictionWN18RRHits@10.397Rot-Pro
Link PredictionWN18RRHits@100.577Rot-Pro
Link PredictionWN18RRHits@30.482Rot-Pro
Link PredictionWN18RRMRR0.457Rot-Pro
Link PredictionFB15k-237Hits@10.246Rot-Pro
Link PredictionFB15k-237Hits@100.54Rot-Pro
Link PredictionFB15k-237Hits@30.383Rot-Pro
Link PredictionFB15k-237MRR0.344Rot-Pro
Link Property Predictionogbl-wikikg2Number of params1000669602Rot-Pro
Link Property Predictionogbl-wikikg2Number of params1000669602RotPro

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