Inferring connectivity in networked dynamical systems: Challenges using Granger causality

Bethany Lusch, Pedro D. Maia, and J. Nathan Kutz
Phys. Rev. E 94, 032220 – Published 27 September 2016

Abstract

Determining the interactions and causal relationships between nodes in an unknown networked dynamical system from measurement data alone is a challenging, contemporary task across the physical, biological, and engineering sciences. Statistical methods, such as the increasingly popular Granger causality, are being broadly applied for data-driven discovery of connectivity in fields from economics to neuroscience. A common version of the algorithm is called pairwise-conditional Granger causality, which we systematically test on data generated from a nonlinear model with known causal network structure. Specifically, we simulate networked systems of Kuramoto oscillators and use the Multivariate Granger Causality Toolbox to discover the underlying coupling structure of the system. We compare the inferred results to the original connectivity for a wide range of parameters such as initial conditions, connection strengths, community structures, and natural frequencies. Our results show a significant systematic disparity between the original and inferred network, unless the true structure is extremely sparse or dense. Specifically, the inferred networks have significant discrepancies in the number of edges and the eigenvalues of the connectivity matrix, demonstrating that they typically generate dynamics which are inconsistent with the ground truth. We provide a detailed account of the dynamics for the Erdős-Rényi network model due to its importance in random graph theory and network science. We conclude that Granger causal methods for inferring network structure are highly suspect and should always be checked against a ground truth model. The results also advocate the need to perform such comparisons with any network inference method since the inferred connectivity results appear to have very little to do with the ground truth system.

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  • Received 5 May 2016

DOI:https://doi.org/10.1103/PhysRevE.94.032220

©2016 American Physical Society

Physics Subject Headings (PhySH)

  1. Physical Systems
  1. Techniques
Nonlinear Dynamics

Authors & Affiliations

Bethany Lusch, Pedro D. Maia, and J. Nathan Kutz

  • Department of Applied Mathematics, University of Washington, Seattle, Washington 98195-3925, USA

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Issue

Vol. 94, Iss. 3 — September 2016

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