English

Relphormer: Relational Graph Transformer for Knowledge Graph Representations

Computation and Language 2023-11-22 v6 Artificial Intelligence Information Retrieval Machine Learning

Abstract

Transformers have achieved remarkable performance in widespread fields, including natural language processing, computer vision and graph mining. However, vanilla Transformer architectures have not yielded promising improvements in the Knowledge Graph (KG) representations, where the translational distance paradigm dominates this area. Note that vanilla Transformer architectures struggle to capture the intrinsically heterogeneous structural and semantic information of knowledge graphs. To this end, we propose a new variant of Transformer for knowledge graph representations dubbed Relphormer. Specifically, we introduce Triple2Seq which can dynamically sample contextualized sub-graph sequences as the input to alleviate the heterogeneity issue. We propose a novel structure-enhanced self-attention mechanism to encode the relational information and keep the semantic information within entities and relations. Moreover, we utilize masked knowledge modeling for general knowledge graph representation learning, which can be applied to various KG-based tasks including knowledge graph completion, question answering, and recommendation. Experimental results on six datasets show that Relphormer can obtain better performance compared with baselines. Code is available in https://github.com/zjunlp/Relphormer.

Keywords

Cite

@article{arxiv.2205.10852,
  title  = {Relphormer: Relational Graph Transformer for Knowledge Graph Representations},
  author = {Zhen Bi and Siyuan Cheng and Jing Chen and Xiaozhuan Liang and Feiyu Xiong and Ningyu Zhang},
  journal= {arXiv preprint arXiv:2205.10852},
  year   = {2023}
}

Comments

Neurocomputing 2023

R2 v1 2026-06-24T11:24:48.523Z