Finding the direction of lowest resilience in multivariate complex systems
Author(s) -
Els Weinans,
J. Jelle Lever,
Sebastian Bathiany,
Rick Quax,
Jordi Bascompte,
Egbert H. van Nes,
Marten Scheffer,
Ingrid A. van de Leemput
Publication year - 2019
Publication title -
journal of the royal society interface
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 1.655
H-Index - 139
eISSN - 1742-5689
pISSN - 1742-5662
DOI - 10.1098/rsif.2019.0629
Subject(s) - slowness , autocorrelation , multivariate statistics , computer science , noise (video) , resilience (materials science) , econometrics , series (stratigraphy) , variance (accounting) , complex network , set (abstract data type) , complex system , time series , data mining , algorithm , statistics , artificial intelligence , mathematics , machine learning , geology , physics , economics , image (mathematics) , thermodynamics , programming language , paleontology , accounting , seismology , world wide web
The dynamics of complex systems, such as ecosystems, financial markets and the human brain, emerge from the interactions of numerous components. We often lack the knowledge to build reliable models for the behaviour of such network systems. This makes it difficult to predict potential instabilities. We show that one could use the natural fluctuations in multivariate time series to reveal network regions with particularly slow dynamics. The multidimensional slowness points to the direction of minimal resilience, in the sense that simultaneous perturbations on this set of nodes will take longest to recover. We compare an autocorrelation-based method with a variance-based method for different time-series lengths, data resolution and different noise regimes. We show that the autocorrelation-based method is less robust for short time series or time series with a low resolution but more robust for varying noise levels. This novel approach may help to identify unstable regions of multivariate systems or to distinguish safe from unsafe perturbations.
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