How exceptional is the extremal Kendall and Kendall-type convolution
B.H. Jasiulis-Go{\l}dyn, J.K. Misiewicz, E. Omey, J. Weso{\l}owski

TL;DR
This paper explores generalized convolutions related to the Williamson transform and maximum operation, focusing on properties that enable modeling of renewal processes and their applications in extreme value theory and dependency modeling.
Contribution
It introduces a novel approach to applying generalized convolutions, including Kendall and Kingman, in extreme value theory and establishes connections with copulas and order statistics.
Findings
Stochastic representation of Kucharczak-Urbanik in order statistics
Application of generalized convolutions to extreme value theory
Open problem on copulas and generalized convolutions addressed
Abstract
This paper deals with the generalized convolutions connected with the Williamson transform and the maximum operation. We focus on such convolutions which can define transition probabilities of renewal processes. They should be monotonic since the described time or destruction does not go back, it should admit existence of a distribution with a lack of memory property because the analog of the Poisson process shall exist. Another valuable property is the simplicity of calculating and inverting the corresponding generalized characteristic function (in particular Williamson transform) so that the technique of generalized characteristic function can be used in description of our processes. The convex linear combination property (the generalized convolution of two point measures is the convex combination of several fixed measures), or representability (which means that the generalized…
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Taxonomy
TopicsFinancial Risk and Volatility Modeling · Insurance, Mortality, Demography, Risk Management · Statistical Distribution Estimation and Applications
