Relation-aware Graph Convolutional Networks for Multi-relational Network Alignment

Yujie Fang, Xin Li*, Rui Ye, Xiaoyan Tan, Peiyao Zhao, Mingzhong Wang

*Corresponding author for this work

Research output: Contribution to journalArticlepeer-review

5 Citations (Scopus)

Abstract

The alignment of multiple multi-relational networks, such as knowledge graphs, is vital for many AI applications. In comparison with existing GCNs which cannot fully utilize relational information of multiple types, we propose a relation-aware graph convolutional network (ERGCN), which is equipped with both entity convolution and relation convolution to learn the entity embeddings and relation embeddings simultaneously. The role discrimination and translation property of knowledge graphs are adopted in the entity convolutional process to incorporate the relation information. To facilitate the relation convolution, we construct quadruples to model the connection between a pair of relations thus to determine their neighborhood, which also enables the relation convolution to be conducted in an efficient way. Thereafter, AERGCN, the alignment framework based on ERGCN, is developed for multi-relational network alignment tasks. Anchors are used to supervise the objective function, which aims at minimizing the distances between anchors and to generate new cross-network triplets to build a bridge between different knowledge graphs at the level of triplet to improve the performance of alignment. Experiments on real-world datasets show that the proposed solutions outperform the competitive baselines in terms of link prediction, entity alignment, and relation alignment.

Original languageEnglish
Article number37
JournalACM Transactions on Intelligent Systems and Technology
Volume14
Issue number2
DOIs
Publication statusPublished - 16 Feb 2023

Keywords

  • Multi-relational network alignment
  • entity alignment
  • link prediction
  • relation alignment
  • relation-aware GCN

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