An Optimal Multi-layer Reinsurance Policy under Conditional Tail Expectation
Abstract
A usual reinsurance policy for insurance companies admits one or two layers of the payment deductions. Under optimal criterion of minimizing the conditional tail expectation (CTE) risk measure of the insurer's total risk, this article generalized an optimal stop-loss reinsurance policy to an optimal multi-layer reinsurance policy. To achieve such optimal multi-layer reinsurance policy, this article starts from a given optimal stop-loss reinsurance policy f(·). In the first step, it cuts down an interval [0,∞) into two intervals [0,M1) and [M1,∞). By shifting the origin of Cartesian coordinate system to (M1,f(M1)), and showing that under the CTE criteria f(x)I[0, M1)(x)+(f(M1)+f(x-M1))I[M1,∞)(x) is, again, an optimal policy. This extension procedure can be repeated to obtain an optimal k-layer reinsurance policy. Finally, unknown parameters of the optimal multi-layer reinsurance policy are estimated using some additional appropriate criteria. Three simulation-based studies have been conducted to demonstrate: ( 1) The practical applications of our findings and ( 2) How one may employ other appropriate criteria to estimate unknown parameters of an optimal multi-layer contract. The multi-layer reinsurance policy, similar to the original stop-loss reinsurance policy is optimal, in a same sense. Moreover it has some other optimal criteria which the original policy does not have. Under optimal criterion of minimizing general translative and monotone risk measure (·) of either the insurer's total risk or both the insurer's and the reinsurer's total risks, this article (in its discussion) also extends a given optimal reinsurance contract f(·) to a multi-layer and continuous reinsurance policy.
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