KGRefiner: Knowledge Graph Refinement for Improving Accuracy of
Translational Link Prediction Methods
- URL: http://arxiv.org/abs/2106.14233v1
- Date: Sun, 27 Jun 2021 13:32:39 GMT
- Title: KGRefiner: Knowledge Graph Refinement for Improving Accuracy of
Translational Link Prediction Methods
- Authors: Mohammad Javad Saeedizade, Najmeh Torabian, Behrouz Minaei-Bidgoli
- Abstract summary: This paper proposes a method for refining the knowledge graph.
It makes the knowledge graph more informative, and link prediction operations can be performed more accurately.
Our experiments show that our method can significantly increase the performance of translational link prediction methods.
- Score: 4.726777092009553
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Link prediction is the task of predicting missing relations between entities
of the knowledge graph by inferring from the facts contained in it. Recent work
in link prediction has attempted to provide a model for increasing link
prediction accuracy by using more layers in neural network architecture or
methods that add to the computational complexity of models. This paper we
proposed a method for refining the knowledge graph, which makes the knowledge
graph more informative, and link prediction operations can be performed more
accurately using relatively fast translational models. Translational link
prediction models, such as TransE, TransH, TransD, etc., have much less
complexity than deep learning approaches. This method uses the hierarchy of
relationships and also the hierarchy of entities in the knowledge graph to add
the entity information as a new entity to the graph and connect it to the nodes
which contain this information in their hierarchy. Our experiments show that
our method can significantly increase the performance of translational link
prediction methods in H@10, MR, MRR.
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