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Published April 7, 2020 | Published + Supplemental Material
Journal Article Open

Unveiling causal interactions in complex systems

Abstract

Throughout time, operational laws and concepts from complex systems have been employed to quantitatively model important aspects and interactions in nature and society. Nevertheless, it remains enigmatic and challenging, yet inspiring, to predict the actual interdependencies that comprise the structure of such systems, particularly when the causal interactions observed in real-world phenomena might be persistently hidden. In this article, we propose a robust methodology for detecting the latent and elusive structure of dynamic complex systems. Our treatment utilizes short-term predictions from information embedded in reconstructed state space. In this regard, using a broad class of real-world applications from ecology, neurology, and finance, we explore and are able to demonstrate our method's power and accuracy to reconstruct the fundamental structure of these complex systems, and simultaneously highlight their most fundamental operations.

Additional Information

© 2020 National Academy of Sciences. Published under the PNAS license. Contributed by H. Eugene Stanley, January 21, 2020 (sent for review October 18, 2019; reviewed by Grigoris Kalogeropoulos and Saurabh Mishra). PNAS first published March 25, 2020. S.K.S. and A.A.P. acknowledge the gracious support of this work by the Engineering and Physical Sciences Research Council and Economic and Social Research Council Centre for Doctoral Training on Quantification and Management of Risk and Uncertainty in Complex Systems and Environments (EP/L015927/1). The Boston University work was supported by NSF Grants PHY-1505000, CMMI-1125290, and CHE-1213217. The authors alone are responsible for the content and writing of the paper. The remaining errors are ours. Author contributions: S.K.S., A.A.P., and H.E.S. designed research; S.K.S., A.A.P., H.E.S., and K.M.Z. performed research; S.K.S., A.A.P., H.E.S., and K.M.Z. contributed new reagents/analytic tools; S.K.S. analyzed data; and S.K.S., A.A.P., and H.E.S. wrote the paper. Reviewers: G.K., National and Kapodistrian University of Athens; and S.M., Stanford University. The authors declare no competing interest. Data deposition: R code related to this paper has been deposited in GitHub (https://github.com/skstavroglou/pattern_causality). This article contains supporting information online at https://www.pnas.org/lookup/suppl/doi:10.1073/pnas.1918269117/-/DCSupplemental.

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Additional details

Created:
August 22, 2023
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October 19, 2023