Probability estimation of rare extreme events in the case of small samples: Technique and examples of analysis of earthquake catalogs


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Abstract

The most general approach to studying the recurrence law in the area of the rare largest events is associated with the use of limit law theorems of the theory of extreme values. In this paper, we use the Generalized Pareto Distribution (GPD). The unknown GPD parameters are typically determined by the method of maximal likelihood (ML). However, the ML estimation is only optimal for the case of fairly large samples (>200–300), whereas in many practical important cases, there are only dozens of large events. It is shown that in the case of a small number of events, the highest accuracy in the case of using the GPD is provided by the method of quantiles (MQs). In order to illustrate the obtained methodical results, we have formed the compiled data sets characterizing the tails of the distributions for typical subduction zones, regions of intracontinental seismicity, and for the zones of midoceanic (MO) ridges. This approach paves the way for designing a new method for seismic risk assessment. Here, instead of the unstable characteristics—the uppermost possible magnitude Mmax—it is recommended to use the quantiles of the distribution of random maxima for a future time interval. The results of calculating such quantiles are presented.

About the authors

V. F. Pisarenko

Institute of Earthquake Prediction Theory and Mathematical Geophysics

Author for correspondence.
Email: pisarenko@yasenevo.ru
Russian Federation, Moscow, 117997

M. V. Rodkin

Institute of Earthquake Prediction Theory and Mathematical Geophysics

Email: pisarenko@yasenevo.ru
Russian Federation, Moscow, 117997

T. A. Rukavishnikova

Institute of Earthquake Prediction Theory and Mathematical Geophysics

Email: pisarenko@yasenevo.ru
Russian Federation, Moscow, 117997

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