Prior Bilinear Based Models for Knowledge Graph Completion

25 Sep 2023  ·  Jiayi Li, Ruilin Luo, Jiaqi Sun, Jing Xiao, Yujiu Yang ·

Bilinear based models are powerful and widely used approaches for Knowledge Graphs Completion (KGC). Although bilinear based models have achieved significant advances, these studies mainly concentrate on posterior properties (based on evidence, e.g. symmetry pattern) while neglecting the prior properties. In this paper, we find a prior property named "the law of identity" that cannot be captured by bilinear based models, which hinders them from comprehensively modeling the characteristics of KGs. To address this issue, we introduce a solution called Unit Ball Bilinear Model (UniBi). This model not only achieves theoretical superiority but also offers enhanced interpretability and performance by minimizing ineffective learning through minimal constraints. Experiments demonstrate that UniBi models the prior property and verify its interpretability and performance.

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Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
Link Property Prediction ogbl-biokg UniBi Test MRR 0.8550 ± 0.0003 # 5
Validation MRR 0.8553 ± 0.0001 # 5
Number of params 181654170 # 4
Ext. data No # 1

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