Knowledge Graph Completion Using a Pre-Trained Language Model Based on Categorical Information and Multi-Layer Residual Attention

Author:

Rao Qiang1,Wang Tiejun2ORCID,Guo Xiaoran2,Wang Kaijie1ORCID,Yan Yue1

Affiliation:

1. Key Laboratory of China’s Ethnic Languages and Information Technology of Ministry of Education, Northwest Minzu University, Lanzhou 730030, China

2. School of Mathematics and Computer Science, Northwest Minzu Univsersity, Lanzhou 730030, China

Abstract

Knowledge graph completion (KGC) utilizes known knowledge graph triples to infer and predict missing knowledge, making it one of the research hotspots in the field of knowledge graphs. There are still limitations in generating high-quality entity embeddings and fully understanding the contextual information of entities and relationships. To overcome these challenges, this paper introduces a novel pre-trained language model-based method for knowledge graph completion that significantly enhances the quality of entity embeddings by integrating entity categorical information with textual descriptions. Additionally, this method employs an innovative multi-layer residual attention network in combination with PLMs, deepening the understanding of the joint contextual information of entities and relationships. Experimental results on the FB15k-237 and WN18RR datasets demonstrate that our proposed model significantly outperforms existing baseline models in link prediction tasks.

Funder

Research on Thangka Image Obje ct Detection Method

Publisher

MDPI AG

Reference22 articles.

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2. Sun, Z., Deng, Z.H., Nie, J.Y., and Tang, J. (2019). Rotate: Knowledge graph embedding by relational rotation in complex space. arXiv.

3. Yao, L., Mao, C., and Luo, Y. (2019). KG-BERT: BERT for knowledge graph completion. arXiv.

4. Structure-Augmented Text Representation Learning for Efficient Knowledge Graph Completion;Wang;Proc. Web Conf.,2021

5. Wang, X., He, Q., Liang, J., and Xiao, Y. (2022, January 23–29). Language Models as Knowledge Embeddings. Proceedings of the International Joint Conference on Artificial Intelligence, Vienna, Austria.

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