2015
DOI: 10.1016/j.insmatheco.2015.08.005
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Optimal retention for a stop-loss reinsurance with incomplete information

Abstract: This paper considers the determination of optimal retention in a stop-loss reinsurance. Assume that we only have incomplete information on a risk X for an insurer, we calculate an upper bound for the value at risk (VaR) of the total loss of an insurer after stop-loss reinsurance arrangement. The adopted method is a distribution-free approximation which allows to construct the extremal random variables with respect to the stochastic dominance order and the stop-loss order. We develop an optimization criterion f… Show more

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Cited by 21 publications
(11 citation statements)
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References 19 publications
(26 reference statements)
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“…Moreover, in practice, we usually know the average of λ i n 's rather than their distribution function. There are a few studies such as [37], [38], that consider the case when incomplete information of X is available. However, those solutions are not applicable here because they either have to know at least the average and variance of X or they are interested in finding the optimal retention d or estimating the minimal stop-loss rather than the optimum value of X.…”
Section: B Finite-size Buffer Shallow Cloudletsmentioning
confidence: 99%
“…Moreover, in practice, we usually know the average of λ i n 's rather than their distribution function. There are a few studies such as [37], [38], that consider the case when incomplete information of X is available. However, those solutions are not applicable here because they either have to know at least the average and variance of X or they are interested in finding the optimal retention d or estimating the minimal stop-loss rather than the optimum value of X.…”
Section: B Finite-size Buffer Shallow Cloudletsmentioning
confidence: 99%
“…Cai and Tan [3] hypothesized that the form of insurance is a stop-loss reinsurance, and the minimality of gross loss of the insurer measured by VaR and CTE as the objective function, and the optimal deductible is calculated under the principle of expected premium. Hu et al [4] researched the calculation of the optimal retention of stoploss reinsurance under the condition of incomplete information on the aggregate loss function of the insurance company, while minimizing the VaR risk metric, and contrasted with the results of Cai and Tan [3]. Kong et al [5] studied the optimal reinsurance issues in which both insurers and reinsurers face risks and uncertainties under general premium principles.…”
Section: Introductionmentioning
confidence: 99%
“…To our knowledge, the most widely used premium principle in the existing works turns out to be the expected premium principle, see Cheung, et al [19], Lu, et al [16], Cai, et al [5], Chi and Tan [17], etc.. Assa [20], Zheng and Cui [21], Cui, et al [22] extended their premium principle to the distortion premium principle. Zhu, et al [23] further extended their premium principle to very general one that satisfies three mild conditions: distribution invariance, risk loading and preserving the convex order, see also Chi and Tan [24]. (c) Generalizing the risk measures.…”
Section: Introductionmentioning
confidence: 99%
“…(c) Generalizing the risk measures. Using the VaR, CTE, AVaR, respectively, Hu, et al [25], Cai and Tan [26], Cai, et al [12], Cheung [14] and Chi and Tan [24] found the optimal reinsurance contract. In Asimit, et al [27], a quantile-based risk measure was adopted in accordance with the insurer's appetite.…”
Section: Introductionmentioning
confidence: 99%