M-CaStLe: Uncovering Local Causal Structures in Multivariate Space-Time Gridded Data
arXiv cs.LG / 5/4/2026
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Key Points
- The paper introduces M-CaStLe, an extension of the CaStLe meta-algorithm that performs causal graph discovery for multivariate space-time gridded data under locality and stationarity assumptions.
- M-CaStLe generalizes CaStLe’s local embedding and parent-identification to jointly learn within-variable and cross-variable space-time causal relationships.
- By restricting candidate parents to a fixed-size space-time neighborhood and pooling spatial replicates, the method effectively boosts sample size to make high-dimensional discovery feasible.
- The approach decomposes the learned multivariate stencil graph into reaction and spatial components to improve interpretability in complex systems.
- Experiments across multiple benchmark and real-world scenarios show improved recovery of multivariate causal structure and identification of physically meaningful dynamics, including ocean–atmosphere coupling in ENSO data.
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