Robust risk aggregation with neural networks

dc.contributor.authorEckstein, Stephan
dc.contributor.authorKupper, Michael
dc.contributor.authorPohl, Mathias
dc.date.accessioned2020-07-01T11:25:38Z
dc.date.available2020-07-01T11:25:38Z
dc.date.issued2020-10
dc.description.abstractWe consider settings in which the distribution of a multivariate random variable is partly ambiguous. We assume the ambiguity lies on the level of the dependence structure, and that the marginal distributions are known. Furthermore, a current best guess for the distribution, called reference measure, is available. We work with the set of distributions that are both close to the given reference measure in a transportation distance (e.g., the Wasserstein distance), and additionally have the correct marginal structure. The goal is to find upper and lower bounds for integrals of interest with respect to distributions in this set. The described problem appears naturally in the context of risk aggregation. When aggregating different risks, the marginal distributions of these risks are known and the task is to quantify their joint effect on a given system. This is typically done by applying a meaningful risk measure to the sum of the individual risks. For this purpose, the stochastic interdependencies between the risks need to be specified. In practice, the models of this dependence structure are however subject to relatively high model ambiguity. The contribution of this paper is twofold: First, we derive a dual representation of the considered problem and prove that strong duality holds. Second, we propose a generally applicable and computationally feasible method, which relies on neural networks, in order to numerically solve the derived dual problem. The latter method is tested on a number of toy examples, before it is finally applied to perform robust risk aggregation in a real‐world instance.eng
dc.description.versionpublishedde
dc.identifier.doi10.1111/mafi.12280eng
dc.identifier.pmid33041536
dc.identifier.ppn1741936136
dc.identifier.urihttps://kops.uni-konstanz.de/handle/123456789/50084
dc.language.isoengeng
dc.rightsAttribution 4.0 International
dc.rights.urihttp://creativecommons.org/licenses/by/4.0/
dc.subject.ddc510eng
dc.titleRobust risk aggregation with neural networkseng
dc.typeJOURNAL_ARTICLEde
dspace.entity.typePublication
kops.citation.bibtex
@article{Eckstein2020-10Robus-50084,
  year={2020},
  doi={10.1111/mafi.12280},
  title={Robust risk aggregation with neural networks},
  number={4},
  volume={30},
  issn={0960-1627},
  journal={Mathematical Finance},
  pages={1229--1272},
  author={Eckstein, Stephan and Kupper, Michael and Pohl, Mathias}
}
kops.citation.iso690ECKSTEIN, Stephan, Michael KUPPER, Mathias POHL, 2020. Robust risk aggregation with neural networks. In: Mathematical Finance. Wiley. 2020, 30(4), pp. 1229-1272. ISSN 0960-1627. eISSN 1467-9965. Available under: doi: 10.1111/mafi.12280deu
kops.citation.iso690ECKSTEIN, Stephan, Michael KUPPER, Mathias POHL, 2020. Robust risk aggregation with neural networks. In: Mathematical Finance. Wiley. 2020, 30(4), pp. 1229-1272. ISSN 0960-1627. eISSN 1467-9965. Available under: doi: 10.1111/mafi.12280eng
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kops.sourcefield.plainMathematical Finance. Wiley. 2020, 30(4), pp. 1229-1272. ISSN 0960-1627. eISSN 1467-9965. Available under: doi: 10.1111/mafi.12280deu
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source.periodicalTitleMathematical Financeeng
source.publisherWileyeng

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