Estimation for a four parameter generalized extreme value distribution |
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Authors: | P.A. Scarf |
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Affiliation: | 1. Centre for O.R. &2. Applied Statistics , University of Salford , Salford, MS 4WT, U.K. |
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Abstract: | Estimation is considered for a class of models which are simple extensions of the generalized extreme value (GEV) distribution, suitable for introducing time dependence into models which are otherwise only spatially dependent. Maximum likelihood estimation and the method of probability weighted moment estimation are identified as most useful for fitting these models. The relative merits of these methods, and others, is discussed in the context of estimation for the GEV distribution, with particular reference to the non - regularity of the GEV distribution for particular parameter values. In the case of maximum likelihood estimation, first and second derivatives of the log likelihood are evaluated for the models. |
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Keywords: | maximum likelihood estimation generalized extreme value (GEV) distribution non - regularity probability weighted moments three parameter Weibull extrapolation |
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