English

Causal-INSIGHT: Probing Temporal Models to Extract Causal Structure

Machine Learning 2026-03-27 v1

Abstract

Understanding directed temporal interactions in multivariate time series is essential for interpreting complex dynamical systems and the predictive models trained on them. We present Causal-INSIGHT, a model-agnostic, post-hoc interpretation framework for extracting model-implied (predictor-dependent), directed, time-lagged influence structure from trained temporal predictors. Rather than inferring causal structure at the level of the data-generating process, Causal-INSIGHT analyzes how a fixed, pre-trained predictor responds to systematic, intervention-inspired input clamping applied at inference time. From these responses, we construct directed temporal influence signals that reflect the dependencies the predictor relies on for prediction, and introduce Qbic, a sparsity-aware graph selection criterion that balances predictive fidelity and structural complexity without requiring ground-truth graph labels. Experiments across synthetic, simulated, and realistic benchmarks show that Causal-INSIGHT generalizes across diverse backbone architectures, maintains competitive structural accuracy, and yields significant improvements in temporal delay localization when applied to existing predictors.

Keywords

Cite

@article{arxiv.2603.25473,
  title  = {Causal-INSIGHT: Probing Temporal Models to Extract Causal Structure},
  author = {Benjamin Redden and Hui Wang and Shuyan Li},
  journal= {arXiv preprint arXiv:2603.25473},
  year   = {2026}
}

Comments

Accepted at IJCNN, 2026

R2 v1 2026-07-01T11:39:18.278Z