Tracking the distance to criticality in systems with unknown noise
Brendan Harris, Leonardo L. Gollo, Ben D. Fulcher

TL;DR
This paper develops noise-robust indicators for measuring the distance to criticality in systems affected by unknown or variable noise levels, introducing the RAD statistic and applying it to brain data.
Contribution
The study introduces the Rescaled Auto-Density (RAD), a new high-performing time-series feature for assessing criticality under variable noise conditions, validated on neural data.
Findings
Existing metrics fail under variable noise
RAD effectively captures the DTC in noisy systems
Brain regions closer to criticality are higher in the visual hierarchy
Abstract
Many real-world systems undergo abrupt changes in dynamics as they move across critical points, often with dramatic consequences. Much existing theory on identifying the time-series signatures of nearby critical points -- such as increased variance and slower timescales -- is derived for the case of fixed, low-amplitude noise. However, real-world systems are often corrupted by unknown levels of noise that can distort these temporal signatures. Here we aimed to develop noise-robust indicators of the distance to criticality (DTC) for systems affected by dynamical noise in two cases: when the noise amplitude is fixed, or is unknown and variable across recordings. To approach this problem, we compare the ability of over 7000 candidate time-series features to track the DTC in the vicinity of a supercritical Hopf bifurcation. We recover existing theory in the fixed-noise case, highlighting…
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Taxonomy
TopicsTime Series Analysis and Forecasting · Complex Systems and Time Series Analysis · Ecosystem dynamics and resilience
