Probabilistic multivariate early warning signals
Ville Laitinen, Leo Lahti

TL;DR
This paper introduces a probabilistic multivariate approach for early warning signals to better predict critical transitions in complex systems, outperforming traditional indicators in simulations.
Contribution
It proposes a novel probabilistic vector autoregression model as an early warning indicator, enhancing detection sensitivity through improved data utilization and uncertainty handling.
Findings
Improved early warning detection sensitivity in ecological models.
Probabilistic approach outperforms traditional univariate indicators.
The method offers theoretical advantages in model regularization and parameter interpretation.
Abstract
A broad range of natural and social systems from human microbiome to financial markets can go through critical transitions, where the system suddenly collapses to another stable configuration. Critical transitions can be unexpected, with potentially catastrophic consequences. Anticipating them early and accurately can facilitate controlled system manipulation and mitigation of undesired outcomes. Obtaining reliable predictions have been difficult, however, as often only a small fraction of the relevant variables can be monitored, and even minor perturbations can induce drastic changes in fragile states of a complex system. Data-driven indicators have been proposed as an alternative to prediction and signal an increasing risk of forthcoming transitions. Autocorrelation and variance are examples of generic indicators that tend to increase at the vicinity of an approaching tipping point…
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Taxonomy
TopicsEcosystem dynamics and resilience · Complex Systems and Time Series Analysis · Complex Systems and Decision Making
