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On the representation and embedding of knowledge bases beyond binary relations

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The models developed to date for knowledge base embedding are all based on the assumption that the relations contained in knowledge bases are binary. For the training and testing of these embedding models, multi-fold (or n-ary) relational data are converted to triples (e.g., in FB15K dataset) and interpreted as instances of binary relations. This paper presents a canonical representation of knowledge bases containing multi-fold relations. We show that the existing embedding models on the popular FB15K datasets correspond to a sub-optimal modelling framework, resulting in a loss of structural information. We advocate a novel modelling framework, which models multi-fold relations directly using this canonical representation. Using this framework, the existing TransH model is generalized to a new model, m-TransH. We demonstrate experimentally that m-TransH outperforms TransH by a large margin, thereby establishing a new state of the art.

Jianfeng Wen, Jianxin Li, Yongyi Mao, Shini Chen, Richong Zhang• 2016

Related benchmarks

TaskDatasetResultRank
Entity PredictionWikiPeople subject object
MRR6.3
14
Entity PredictionJF17K subject/object
MRR0.206
14
Entity PredictionWikiPeople (all entities)
MRR30.2
12
Entity PredictionJF17K (all entities)
MRR10.2
11
Link PredictionWikiPeople 2.6% qualifier ratio (standard)
MRR0.063
9
Link PredictionJF17K 45.9% qualifier ratio
MRR0.206
9
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