Approximation methods for piecewise deterministic Markov processes and their costs
Open access
Date
2019Type
- Journal Article
Abstract
In this paper, we analyse piecewise deterministic Markov processes (PDMPs), as introduced in Davis (1984). Many models in insurance mathematics can be formulated in terms of the general concept of PDMPs. There one is interested in computing certain quantities of interest such as the probability of ruin or the value of an insurance company. Instead of explicitly solving the related integro-(partial) differential equation (an approach which can only be used in few special cases), we adapt the problem in a manner that allows us to apply deterministic numerical integration algorithms such as quasi-Monte Carlo rules; this is in contrast to applying random integration algorithms such as Monte Carlo. To this end, we reformulate a general cost functional as a fixed point of a particular integral operator, which allows for iterative approximation of the functional. Furthermore, we introduce a smoothing technique which is applied to the integrands involved, in order to use error bounds for deterministic cubature rules. We prove a convergence result for our PDMPs approximation, which is of independent interest as it justifies phase-type approximations on the process level. We illustrate the smoothing technique for a risk-theoretic example, and compare deterministic and Monte Carlo integration. Show more
Permanent link
https://doi.org/10.3929/ethz-b-000315837Publication status
publishedExternal links
Journal / series
Scandinavian Actuarial JournalVolume
Pages / Article No.
Publisher
Taylor & FrancisSubject
Risk theory; Piecewise deterministic Markov process; quasi-Monte Carlo methods; Phase-type approximations; Dividend maximisationOrganisational unit
03951 - Jentzen, Arnulf (ehemalig) / Jentzen, Arnulf (former)
09557 - Cheridito, Patrick / Cheridito, Patrick
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