Structural Gating and Effect-aligned Lag-resolved Temporal Causal Discovery Framework with Application to Heat-Pollution Extremes

arXiv cs.LG / 4/14/2026

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Key Points

  • The paper introduces SGED-TCD, a new temporal causal discovery framework for complex multivariate time series that targets lag-resolved causal graph inference.
  • SGED-TCD integrates structural gating, stability-oriented learning, perturbation-effect alignment, and unified graph extraction to improve interpretability and robustness of inferred causal relationships.
  • The framework is evaluated on a climate application involving teleconnection-driven compound heatwave–air-pollution extremes in eastern and northern China using climate indices and atmospheric boundary-layer and circulation variables.
  • Results show region- and season-specific dominant lagged causal pathways, with warm-season extremes in Eastern China linked to low-latitude ocean variability, while cold-season extremes in Northern China are more influenced by high-latitude circulation variability tied to boundary-layer suppression and stagnation.
  • The authors argue SGED-TCD is generalizable beyond this climate domain, offering a reusable basis for temporal causal discovery in other complex systems.

Abstract

This study proposes Structural Gating and Effect-aligned Discovery for Temporal Causal Discovery (SGED-TCD), a novel and general framework for lag-resolved causal discovery in complex multivariate time series. SGED-TCD combines explicit structural gating, stability-oriented learning, perturbation-effect alignment, and unified graph extraction to improve the interpretability, robustness, and functional consistency of inferred causal graphs. To evaluate its effectiveness in a representative real-world setting, we apply SGED-TCD to teleconnection-driven compound heatwave--air-pollution extremes in eastern and northern China. Using large-scale climate indices, regional circulation and boundary-layer variables, and compound extreme indicators, the framework reconstructs weighted causal networks with explicit dominant lags and relative causal importance. The inferred networks reveal clear regional and seasonal heterogeneity: warm-season extremes in Eastern China are mainly linked to low-latitude oceanic variability through circulation, radiation, and ventilation pathways, whereas cold-season extremes in Northern China are more strongly governed by high-latitude circulation variability associated with boundary-layer suppression and persistent stagnation. These results show that SGED-TCD can recover physically interpretable, hierarchical, and lag-resolved causal pathways in a challenging climate--environment system. More broadly, the proposed framework is not restricted to the present application and provides a general basis for temporal causal discovery in other complex domains.