Scaling in the Timing of Extreme Events
Alvaro Corral

TL;DR
This paper investigates the scaling laws governing the timing of extreme events in point processes and time series, revealing different distribution behaviors and their implications for understanding natural hazard occurrences.
Contribution
It introduces a unified framework connecting scaling laws of extreme event timings with renormalization-group transformations and the generalized central limit theorem.
Findings
Point processes can exhibit double-power-law distributions with no finite mean.
Scaling laws depend on the type of process, with distinct behaviors for point processes and time series.
Non-parametric scaling laws relate moments of distributions to extreme event occurrence patterns.
Abstract
Extreme events can come either from point processes, when the size or energy of the events is above a certain threshold, or from time series, when the intensity of a signal surpasses a threshold value. We are particularly concerned by the time between these extreme events, called respectively waiting time and quiet time. If the thresholds are high enough it is possible to justify the existence of scaling laws for the probability distribution of the times as a function of the threshold value, although the scaling functions are different in each case. For point processes, in addition to the trivial Poisson process, one can obtain double-power-law distributions with no finite mean value. This is justified in the context of renormalization-group transformations, where such distributions arise as limiting distributions after iterations of the transformation. Clear connections with the…
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