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5 months ago

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

Kai Chen; Ye Wang; Yitong Li; Aiping Li

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

Abstract

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.

Benchmarks

BenchmarkMethodologyMetrics
link-prediction-on-gdeltDistMult
MRR: 0.196
link-prediction-on-gdeltTTransE
MRR: 0.115
link-prediction-on-gdeltDE-SimplE
MRR: 0.23
link-prediction-on-gdeltRotateQVS
MRR: 0.27
link-prediction-on-gdeltTA-DistMult
MRR: 0.206
link-prediction-on-gdeltTeRo
MRR: 0.245
link-prediction-on-gdeltRotateQVS-Small
MRR: 0.259
link-prediction-on-gdeltTeRo-Large
MRR: 0.256
link-prediction-on-gdeltTransE
MRR: 0.113
link-prediction-on-icews05-15-1DistMult
MRR: 0.456
link-prediction-on-icews05-15-1HyTE
MRR: 0.316
link-prediction-on-icews05-15-1TeRo-Large
MRR: 0.534
link-prediction-on-icews05-15-1QuatE
MRR: 0.482
link-prediction-on-icews05-15-1TTransE
MRR: 0.271
link-prediction-on-icews05-15-1DE-SimplE
MRR: 0.513
link-prediction-on-icews05-15-1ATiSE
MRR: 0.519
link-prediction-on-icews05-15-1TransE
MRR: 0.294
link-prediction-on-icews05-15-1RotatEYAGO3-10
MRR: 0.304
link-prediction-on-icews05-15-1RotateQVS
MRR: 0.633
link-prediction-on-icews05-15-1TA-DistMult
MRR: 0.474
link-prediction-on-icews14-1ATiSE
MRR: 0.55
link-prediction-on-icews14-1HyTE
MRR: 0.297
link-prediction-on-icews14-1RotatE
MRR: 0.418
link-prediction-on-icews14-1TTransE
MRR: 0.255
link-prediction-on-icews14-1RotateQVS
MRR: 0.591
link-prediction-on-icews14-1DE-SimplE
MRR: 0.526
link-prediction-on-icews14-1TransE
MRR: 0.28
link-prediction-on-icews14-1QuatE
MRR: 0.471
link-prediction-on-icews14-1TA-DistMult
MRR: 0.477
link-prediction-on-icews14-1TeRo-Large
MRR: 0.534
link-prediction-on-icews14-1DistMult
MRR: 0.439

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