Search : [ keyword: 지식 그래프 임베딩 ] (2)

Knowledge Graph Embedding for Link Prediction using Node-Link Interaction-based Graph Attention Networks

Junseon Kim, Myoungho Kim

http://doi.org/10.5626/JOK.2022.49.7.555

Knowledge graphs are structures that express knowledge in the real world in the form of nodes and links-based triple form. These knowledge graphs are incomplete and many embedding techniques have been studied to effectively represent nodes and links in low-dimensional vector spaces to find other missing relationships. Recently, many neural network-based knowledge graph link prediction methods have been studied. However existing models consider nodes and links independently when determining the importance of a triple to a node which makes it difficult to reflect the interaction between nodes and links. In this paper, we propose an embedding method that will be used to analyze the importance of triple units by simultaneously considering nodes and links using composition operators, and at the same time prove that the model outperforms other methods in knowledge graph link prediction.

A Knowledge Graph Embedding-based Ensemble Model for Link Prediction

Su Jeong Choi, Seyoung Park

http://doi.org/10.5626/JOK.2020.47.5.473

Knowledge bases often suffer from their limited applicability due to missing information in their entities and relations. Link prediction has been investigated to complete the missing information and makes a knowledge base more useful. The existing studies on link prediction often rely on knowledge graph embedding and have shown trade-off in their performance. In this paper, we propose an ensemble model for knowledge graph embedding to improve quality of link prediction. The proposed model combines multiple knowledge graph embeddings that have unique characteristics. In this way, the ensemble model is able to consider various aspects of the entries within a knowledge base and reduce the variation of accuracy depending on hyper-parameters. Our experiment shows that the proposed model outperforms other knowledge graph embedding methods by 13.5% on WN18 and FB15K dataset.


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