
handle: 10722/82895
AbstractIn this paper, we reexamine the two optimal reinsurance problems studied in Cai et al. (2008), in which the objectives are to find the optimal reinsurance contracts that minimize the value-at-risk (VaR) and the conditional tail expectation (CTE) of the total risk exposure under the expectation premium principle. We provide a simpler and more transparent approach to solve these problems by using intuitive geometric arguments. The usefulness of this approach is further demonstrated by solving the VaR-minimization problem when the expectation premium principle is replaced by Wang's premium principle.
Comonotonicity, Wang's premium principle, Increasing convex function, Reinsurance, Value-at-risk, Risk theory, insurance, value-at-risk, conditional tail expectation, Conditional tail expectation, Expectation premium principle, increasing convex function, expectation premium principle: comonotinicity, reinsurance
Comonotonicity, Wang's premium principle, Increasing convex function, Reinsurance, Value-at-risk, Risk theory, insurance, value-at-risk, conditional tail expectation, Conditional tail expectation, Expectation premium principle, increasing convex function, expectation premium principle: comonotinicity, reinsurance
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