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Autori principali: Redden, Benjamin, Wang, Hui, Li, Shuyan
Natura: Preprint
Pubblicazione: 2026
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Accesso online:https://arxiv.org/abs/2603.25473
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author Redden, Benjamin
Wang, Hui
Li, Shuyan
author_facet Redden, Benjamin
Wang, Hui
Li, Shuyan
contents 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.
format Preprint
id arxiv_https___arxiv_org_abs_2603_25473
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Causal-INSIGHT: Probing Temporal Models to Extract Causal Structure
Redden, Benjamin
Wang, Hui
Li, Shuyan
Machine Learning
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.
title Causal-INSIGHT: Probing Temporal Models to Extract Causal Structure
topic Machine Learning
url https://arxiv.org/abs/2603.25473