Fitting inhomogeneous phase-type distributions to data: the univariate and the multivariate case

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The class of inhomogeneous phase-type distributions (IPH) was recently introduced in Albrecher & Bladt (2019) as an extension of the classical phase-type (PH) distributions. Like PH distributions, the class of IPH is dense in the class of distributions on the positive halfline, but leads to more parsimonious models in the presence of heavy tails. In this paper we propose a fitting procedure for this class to given data. We furthermore consider an analogous extension of Kulkarni's multivariate PH class (Kulkarni, 1989) to the inhomogeneous framework and study parameter estimation for the resulting new and flexible class of multivariate distributions. As a by-product, we amend a previously suggested fitting procedure for the homogeneous multivariate PH case and provide appropriate adaptations for censored data. The performance of the algorithms is illustrated in several numerical examples, both for simulated and real-life insurance data.

Original languageEnglish
JournalScandinavian Journal of Statistics
Volume49
Issue number1
Pages (from-to)44-77
ISSN0303-6898
DOIs
Publication statusPublished - 2022

    Research areas

  • heavy tails, inhomogeneous phase-type, matrix Pareto distribution, matrix Weibull distribution, multivariate phase-type, parameter estimation

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