Estimation of Extreme Values by the Average Conditional Exceedance Rate Method
Author(s) -
Arvid Næss,
Oleg Gaidai,
Oleh Karpa
Publication year - 2013
Publication title -
journal of probability and statistics
Language(s) - English
Resource type - Journals
eISSN - 1687-9538
pISSN - 1687-952X
DOI - 10.1155/2013/797014
Subject(s) - extreme value theory , series (stratigraphy) , independence (probability theory) , basis (linear algebra) , mathematics , point (geometry) , block (permutation group theory) , extreme point , computer science , algorithm , statistics , data mining , mathematical optimization , combinatorics , biology , paleontology , geometry
This paper details a method for extreme value prediction on the basis of a sampled time series. The method is specifically designed to account for statistical dependence between the sampled data points in a precise manner. In fact, if properly used, the new method will provide statistical estimates of the exact extreme value distribution provided by the data in most cases of practical interest. It avoids the problem of having to decluster the data to ensure independence, which is a requisite component in the application of, for example, the standard peaks-over-threshold method. The proposed method also targets the use of subasymptotic data to improve prediction accuracy. The method will be demonstrated by application to both synthetic and real data. From a practical point of view, it seems to perform better than the POT and block extremes methods, and, with an appropriate modification, it is directly applicable to nonstationary time series
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