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      Statistical Inference for Max-Stable Processes by Conditioning on Extreme Events

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          Abstract

          In this paper we provide the basis for new methods of inference for max-stable processes ξ on general spaces that admit a certain incremental representation, which, in important cases, has a much simpler structure than the max-stable process itself. A corresponding peaks-over-threshold approach will incorporate all single events that are extreme in some sense and will therefore rely on a substantially larger amount of data in comparison to estimation procedures based on block maxima. Conditioning a process η in the max-domain of attraction of ξ on being extremal, several convergence results for the increments of η are proved. In a similar way, the shape functions of mixed moving maxima (M3) processes can be extracted from suitably conditioned single events η. Connecting the two approaches, transformation formulae for processes that admit both an incremental and an M3 representation are identified.

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          Most cited references23

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          A Spectral Representation for Max-stable Processes

          L. De Haan (1984)
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            Likelihood-Based Inference for Max-Stable Processes

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              A conditional approach for multivariate extreme values (with discussion)

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                Author and article information

                Journal
                applab
                Advances in Applied Probability
                Adv. Appl. Probab.
                Cambridge University Press (CUP)
                0001-8678
                1475-6064
                June 2014
                February 22 2016
                June 2014
                : 46
                : 02
                : 478-495
                Article
                10.1017/S0001867800007175
                a4458902-b358-40fd-ae29-868fe906b69a
                © 2014
                History

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