Model Combination in Risk Sharing under Ambiguity

40 Pages Posted: 6 May 2025 Last revised: 11 Jan 2026

See all articles by Emma Kroell

Emma Kroell

University of Copenhagen

Sebastian Jaimungal

University of Toronto - Department of Statistics; University of Oxford

Silvana M. Pesenti

University of Toronto

Date Written: April 02, 2025

Abstract

We consider the problem of an agent who faces losses in continuous time over a finite time horizon and may choose to share some of these losses with a counterparty. The agent is uncertain about the true loss distribution and has multiple models for the losses. Their goal is to optimize a mean-variance type criterion with model combination under ambiguity through risk sharing. We construct such a criterion using the chi-squared divergence, adapting the monotone mean-variance preferences of Maccheroni et al. (2009) to the model combination setting and exploit a dual representation to expand the state space, yielding a time consistent problem. Assuming a Cramér-Lundberg loss model, we fully characterize the optimal risk sharing contract and the agent’s wealth process under the optimal strategy. Furthermore, we prove that the strategy we obtain is admissible and that the value function satisfies the appropriate verification conditions. Finally, we apply the optimal strategy to an insurance setting using data from a Spanish automobile insurance portfolio, where we obtain differing models using cross-validation and provide numerical illustrations of the results. 

Keywords: risk sharing, model ambiguity, monotone mean-variance, optimal contracting, model combination

Suggested Citation

Kroell, Emma and Jaimungal, Sebastian and Pesenti, Silvana M., Model Combination in Risk Sharing under Ambiguity (April 02, 2025). Available at SSRN: https://ssrn.com/abstract=5203042 or http://dx.doi.org/10.2139/ssrn.5203042

Emma Kroell (Contact Author)

University of Copenhagen ( email )

Nørregade 10
Copenhagen, København DK-1165
Denmark

Sebastian Jaimungal

University of Toronto - Department of Statistics ( email )

100 St. George St.
Toronto, Ontario M5S 3G3
Canada

HOME PAGE: http://http:/sebastian.statistics.utoronto.ca

University of Oxford ( email )

Silvana M. Pesenti

University of Toronto ( email )

700 University Avenue 9F
Toronto, Ontario
Canada

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