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RotateQVS: Representing Temporal Information as Rotations in Quaternion Vector Space for Temporal Knowledge Graph Completion

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Temporal factors are tied to the growth of facts in realistic applications, such as the progress of diseases and the development of political situation, therefore, research on Temporal Knowledge Graph (TKG) attracks much attention. In TKG, relation patterns inherent with temporality are required to be studied for representation learning and reasoning across temporal facts. However, existing methods can hardly model temporal relation patterns, nor can capture the intrinsic connections between relations when evolving over time, lacking of interpretability. In this paper, we propose a novel temporal modeling method which represents temporal entities as Rotations in Quaternion Vector Space (RotateQVS) and relations as complex vectors in Hamilton's quaternion space. We demonstrate our method can model key patterns of relations in TKG, such as symmetry, asymmetry, inverse, and can further capture time-evolved relations by theory. Empirically, we show that our method can boost the performance of link prediction tasks over four temporal knowledge graph benchmarks.

Kai Chen, Ye Wang, Yitong Li, Aiping Li• 2022

Related benchmarks

TaskDatasetResultRank
Temporal Knowledge Graph reasoningICEWS 14
Hits@150.7
48
Link PredictionICEWS 14
MRR59.1
47
Link PredictionICEWS 05-15
Hits@10.529
29
Link PredictionYAGO11k
Hits@10.124
12
Temporal Link PredictionICEWS Interpolation 14 (test)
Hits@150.7
11
Temporal Link PredictionICEWS Interpolation 05-15 (test)
Hits@152.9
11
Link PredictionGDELT
Hits@10.175
10
Temporal Link PredictionYAGO Interpolation 11k (test)
Hits@112.4
10
Temporal Link PredictionWIKIDATA Interpolation 12k (test)
Hits@10.201
10
Interpolation reasoningYAGO
MRR18.9
7
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