Decomposition for multivariate extremal processes |
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Authors: | A.A. Balkema E.I. Pancheva |
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Affiliation: | 1. Department of Mathematics , University of Amsterdam , PI. Muidergracht 24, Amsterdam, NL 1018 TV, Holland;2. Bulgarian Academy of sciences , Institute of Mathematics , Ul.acad. G.Bonchev, bl. 8, Sofia, 1113, Bulgaria |
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Abstract: | The probability distribution of an extremal process in Rd with independent max-increments is completely determined by its distribution function. The df of an extremal process is similar to the cdf of a random vector. It is a monotone function on (0, ∞) × Rd with values in the interval [0,1]. On the other hand the probability distribution of an extremal process is a probability measure on the space of sample functions. That is the space of all increasing right continuous functions y: (0, ∞) → Rd with the topology of weak convergence. A sequence of extremal processes converges in law if the probability distributions converge weakly. This is shown to be equivalent to weak convergence of the df's. An extremal process Y: [0, ∞) → Rd is generated by a point process on the space [0, ∞) × [-∞, ∞)d and has a decomposition Y = X v Z as the maximum of two independent extremal processes with the same lower curve as the original process. The process X is the continuous part and Z contains the fixed discontinuities of the process Y. For a real valued extremal process the decomposition is unique: for a multivariate extremal process uniqueness breaks down due to blotting. |
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Keywords: | blotting decomposition distribution function extremal process lower curve max-increment max-indecomposable max-infinitely divisible multivariate extreme sufficiently rich weak convergence |
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