Using Causal Discovery to Track Information Flow in Spatio-Temporal Data - A Testbed and Experimental Results Using Advection-Diffusion Simulations
Imme Ebert-Uphoff, Yi Deng

TL;DR
This paper develops a simulation-based testbed for evaluating causal discovery algorithms in geoscience, focusing on advection and diffusion processes, and provides benchmark datasets to assess their effectiveness in revealing physical information flow.
Contribution
It introduces a novel simulation testbed for causal discovery in geoscience and offers benchmark datasets to evaluate and understand algorithm performance in physical systems.
Findings
Algorithms can identify dominant advection and diffusion pathways.
Instantaneous connections are challenging to interpret physically.
Benchmark datasets facilitate systematic evaluation of causal discovery methods.
Abstract
Causal discovery algorithms based on probabilistic graphical models have emerged in geoscience applications for the identification and visualization of dynamical processes. The key idea is to learn the structure of a graphical model from observed spatio-temporal data, which indicates information flow, thus pathways of interactions, in the observed physical system. Studying those pathways allows geoscientists to learn subtle details about the underlying dynamical mechanisms governing our planet. Initial studies using this approach on real-world atmospheric data have shown great potential for scientific discovery. However, in these initial studies no ground truth was available, so that the resulting graphs have been evaluated only by whether a domain expert thinks they seemed physically plausible. This paper seeks to fill this gap. We develop a testbed that emulates two dynamical…
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Taxonomy
TopicsBayesian Modeling and Causal Inference · Data Management and Algorithms · Geographic Information Systems Studies
