English

xERTE: Explainable Reasoning on Temporal Knowledge Graphs for Forecasting Future Links

Machine Learning 2021-04-02 v5 Artificial Intelligence

Abstract

Modeling time-evolving knowledge graphs (KGs) has recently gained increasing interest. Here, graph representation learning has become the dominant paradigm for link prediction on temporal KGs. However, the embedding-based approaches largely operate in a black-box fashion, lacking the ability to interpret their predictions. This paper provides a link forecasting framework that reasons over query-relevant subgraphs of temporal KGs and jointly models the structural dependencies and the temporal dynamics. Especially, we propose a temporal relational attention mechanism and a novel reverse representation update scheme to guide the extraction of an enclosing subgraph around the query. The subgraph is expanded by an iterative sampling of temporal neighbors and by attention propagation. Our approach provides human-understandable evidence explaining the forecast. We evaluate our model on four benchmark temporal knowledge graphs for the link forecasting task. While being more explainable, our model obtains a relative improvement of up to 20% on Hits@1 compared to the previous best KG forecasting method. We also conduct a survey with 53 respondents, and the results show that the evidence extracted by the model for link forecasting is aligned with human understanding.

Keywords

Cite

@article{arxiv.2012.15537,
  title  = {xERTE: Explainable Reasoning on Temporal Knowledge Graphs for Forecasting Future Links},
  author = {Zhen Han and Peng Chen and Yunpu Ma and Volker Tresp},
  journal= {arXiv preprint arXiv:2012.15537},
  year   = {2021}
}

Comments

24 pages, 8 figures, accepted to ICLR 2021

R2 v1 2026-06-23T21:38:13.362Z