Link prediction using multi part embeddings
Mohamed, Sameh K. ; Nováček, Vít
Mohamed, Sameh K.
Nováček, Vít
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Publication Date
2019-06-02
Type
Conference Paper
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Citation
Mohamed, Sameh K., & Nováček, Vít. (2019). Link prediction using multi part embeddings. Paper presented at the 16th Extended Semantic Web Conference (ESWC19), Portorož, Slovenia, 02-06 June, doi:10.13025/S8291K
Abstract
Knowledge graph embeddings models are widely used to provide scalable and efficient link prediction for knowledge graphs. They use different techniques to model embeddings interactions, where their tensor factorisation based versions are known to provide state-of-the-art results. In recent works, developments on factorisation based knowledge graph embedding models were mostly limited to enhancing the ComplEx and the DistMult models, as they can efficiently provide predictions within linear time and space complexity. In this work, we aim to extend the works of the ComplEx and the DistMult models by proposing a new factorisation model, TriModel , which uses three part embeddings to model a combination of symmetric and asymmetric interactions between embeddings. We perform an empirical evaluation for the TriModel model compared to other tensor factorisation models on different training configurations (loss functions and regularisation terms), and we show that the TriModel model provides the state-of-the-art results in all configurations. In our experiments, we use standard benchmarking datasets (WN18, WN18RR, FB15k, FB15k-237, YAGO10) along with a new NELL based benchmarking dataset (NELL239) that we have developed.
Publisher
NUI Galway
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Attribution-NonCommercial-NoDerivs 3.0 Ireland