English

STX-Search: Explanation Search for Continuous Dynamic Spatio-Temporal Models

Machine Learning 2025-03-07 v1 Artificial Intelligence

Abstract

Recent improvements in the expressive power of spatio-temporal models have led to performance gains in many real-world applications, such as traffic forecasting and social network modelling. However, understanding the predictions from a model is crucial to ensure reliability and trustworthiness, particularly for high-risk applications, such as healthcare and transport. Few existing methods are able to generate explanations for models trained on continuous-time dynamic graph data and, of these, the computational complexity and lack of suitable explanation objectives pose challenges. In this paper, we propose S\textbf{S}patio-T\textbf{T}emporal EX\textbf{X}planation Search\textbf{Search} (STX-Search), a novel method for generating instance-level explanations that is applicable to static and dynamic temporal graph structures. We introduce a novel search strategy and objective function, to find explanations that are highly faithful and interpretable. When compared with existing methods, STX-Search produces explanations of higher fidelity whilst optimising explanation size to maintain interpretability.

Keywords

Cite

@article{arxiv.2503.04509,
  title  = {STX-Search: Explanation Search for Continuous Dynamic Spatio-Temporal Models},
  author = {Saif Anwar and Nathan Griffiths and Thomas Popham and Abhir Bhalerao},
  journal= {arXiv preprint arXiv:2503.04509},
  year   = {2025}
}
R2 v1 2026-06-28T22:09:19.877Z