A parametric approach to the estimation of convex risk functionals based on Wasserstein distance
In this paper, we explore a static setting for the assessment of risk in the context of mathematical finance and actuarial science that takes into account model uncertainty in the distribution of a possibly infinite-dimensional risk factor. We allow for perturbations around a baseline model, measure...
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Zusammenfassung: | In this paper, we explore a static setting for the assessment of risk in the
context of mathematical finance and actuarial science that takes into account
model uncertainty in the distribution of a possibly infinite-dimensional risk
factor. We allow for perturbations around a baseline model, measured via
Wasserstein distance, and we investigate to which extent this form of
probabilistic imprecision can be parametrized. The aim is to come up with a
convex risk functional that incorporates a sefety margin with respect to
nonparametric uncertainty and still can be approximated through parametrized
models. The particular form of the parametrization allows us to develop a
numerical method, based on neural networks, which gives both the value of the
risk functional and the optimal perturbation of the reference measure.
Moreover, we study the problem under additional constraints on the
perturbations, namely, a mean and a martingale constraint. We show that, in
both cases, under suitable conditions on the loss function, it is still
possible to estimate the risk functional by passing to a parametric family of
perturbed models, which again allows for a numerical approximation via neural
networks. |
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DOI: | 10.48550/arxiv.2210.14340 |