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Discovering Latent Causal Graphs from Spatiotemporal Data

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arxiv 2411.05331 v3 pith:JNA7HQJS submitted 2024-11-08 cs.LG stat.ML

Discovering Latent Causal Graphs from Spatiotemporal Data

classification cs.LG stat.ML
keywords dataspacycausallatentspatialspatiotemporalserieschallenging
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Many important phenomena in scientific fields like climate, neuroscience, and epidemiology are naturally represented as spatiotemporal gridded data with complex interactions. Inferring causal relationships from these data is a challenging problem compounded by the high dimensionality of such data and the correlations between spatially proximate points. We present SPACY (SPAtiotemporal Causal discoverY), a novel framework based on variational inference, designed to model latent time series and their causal relationships from spatiotemporal data. SPACY alleviates the high-dimensional challenge by discovering causal structures in the latent space. To aggregate spatially proximate, correlated grid points, we use spatial factors, parametrized by spatial kernel functions, to map observational time series to latent representations. Theoretically, we generalize the problem to a continuous spatial domain and establish identifiability when the observations arise from a nonlinear, invertible function of the product of latent series and spatial factors. Using this approach, we avoid assumptions that are often unverifiable, including those about instantaneous effects or sufficient variability. Empirically, SPACY outperforms state-of-the-art baselines on synthetic data, even in challenging settings where existing methods struggle, while remaining scalable for large grids. SPACY also identifies key known phenomena from real-world climate data. An implementation of SPACY is available at https://github.com/Rose-STL-Lab/SPACY/

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Cited by 1 Pith paper

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  1. MOSAIC: Module Discovery via Sparse Additive Identifiable Causal Learning for Scientific Time Series

    cs.LG 2026-05 unverdicted novelty 6.0

    MOSAIC recovers identifiable latent variables and their sparse associated observations in scientific time series by combining temporal causal representation learning with support recovery through a sparse additive decoder.