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arxiv: 2501.10235 · v1 · pith:SDO6LLT3new · submitted 2025-01-17 · 💻 cs.LG

SpaceTime: Causal Discovery from Non-Stationary Time Series

classification 💻 cs.LG
keywords causaltimeacrossrelationshipsseriestemporaldiscoverygraph
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Understanding causality is challenging and often complicated by changing causal relationships over time and across environments. Climate patterns, for example, shift over time with recurring seasonal trends, while also depending on geographical characteristics such as ecosystem variability. Existing methods for discovering causal graphs from time series either assume stationarity, do not permit both temporal and spatial distribution changes, or are unaware of locations with the same causal relationships. In this work, we therefore unify the three tasks of causal graph discovery in the non-stationary multi-context setting, of reconstructing temporal regimes, and of partitioning datasets and time intervals into those where invariant causal relationships hold. To construct a consistent score that forms the basis of our method, we employ the Minimum Description Length principle. Our resulting algorithm SPACETIME simultaneously accounts for heterogeneity across space and non-stationarity over time. Given multiple time series, it discovers regime changepoints and a temporal causal graph using non-parametric functional modeling and kernelized discrepancy testing. We also show that our method provides insights into real-world phenomena such as river-runoff measured at different catchments and biosphere-atmosphere interactions across ecosystems.

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Reviewed papers in the Pith corpus that reference this work. Sorted by Pith novelty score.

  1. TTCD:Transformer Integrated Temporal Causal Discovery from Non-Stationary Time Series Data

    cs.LG 2026-04 unverdicted novelty 6.0

    TTCD uses a non-stationary feature learner and reconstruction-guided distillation inside a transformer to infer contemporaneous and lagged causal graphs from non-stationary time series without strong noise assumptions.