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Marginal Indemnification Function formulation for optimal reinsurance
Affiliation:1. Cass Business School, City, University of London EC1Y 8TZ, United Kingdom;2. Amsterdam School of Economics, University of Amsterdam, Roetersstraat 11, Amsterdam 1018 WB, the Netherlands;3. China Institute for Actuarial Science, Central University of Finance and Economics, Beijing 102206, China;4. Department of Mathematics and Department of Statistics, University of Illinois at Urbana-Champaign, Illinois, United States
Abstract:In this paper, we propose to combine the Marginal Indemnification Function (MIF) formulation and the Lagrangian dual method to solve optimal reinsurance model with distortion risk measure and distortion reinsurance premium principle. The MIF method exploits the absolute continuity of admissible indemnification functions and formulates optimal reinsurance model into a functional linear programming of determining an optimal measurable function valued over a bounded interval. The MIF method was recently introduced to analyze the reinsurance model but without premium budget constraint. In this paper, a Lagrangian dual method is applied to combine with MIF to solve for optimal reinsurance solutions under premium budget constraint. Compared with the existing literature, the proposed integrated MIF-based Lagrangian dual method provides a more technically convenient and transparent solution to the optimal reinsurance design. To demonstrate the practicality of the proposed method, analytical solution is derived on a particular reinsurance model that involves minimizing Conditional Value at Risk (a special case of distortion function) and with the reinsurance premium being determined by the inverse-S shaped distortion principle.
Keywords:Optimal reinsurance  Marginal indemnification function  Lagrangian dual method  Distortion risk measure  Inverse-S shaped distortion premium principle
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