DCD: Decomposition-based Causal Discovery from Autocorrelated and Non-Stationary Temporal Data
Ferdous, Muhammad Hasan, Gani, Md Osman
Multivariate time series in domains such as finance, climate science, and healthcare often exhibit long-term trends, seasonal patterns, and short-term fluctuations, complicating causal inference under non-stationarity and autocorrelation. Existing causal discovery methods typically operate on raw observations, making them vulnerable to spurious edges and misattributed temporal dependencies. We introduce a decomposition-based causal discovery framework that separates each time series into trend, seasonal, and residual components and performs component-specific causal analysis. Trend components are assessed using stationarity tests, seasonal components using kernel-based dependence measures, and residual components using constraint-based causal discovery. The resulting component-level graphs are integrated into a unified multi-scale causal structure. This approach isolates long- and short-range causal effects, reduces spurious associations, and improves interpretability. Across extensive synthetic benchmarks and real-world climate data, our framework more accurately recovers ground-truth causal structure than state-of-the-art baselines, particularly under strong non-stationarity and temporal autocorrelation.
Feb-3-2026
- Country:
- North America > United States
- Maryland
- Baltimore (0.14)
- Baltimore County (0.14)
- Massachusetts > Middlesex County
- Cambridge (0.04)
- Maryland
- North America > United States
- Genre:
- Research Report (1.00)
- Industry:
- Health & Medicine (0.34)
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