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引用次数: 6
摘要
本文解决了保险买卖双方对保险损失不明确的Stackelberg微分博弈问题。在外生随机视界上,买卖双方都最大化了他们的预期财富,加上一个反映模糊性的惩罚条款。在平均方差溢价原则和衡量参与者模糊性的一般散度下,我们得到了半显式的Stackelberg均衡。我们的主要结果是最优方差负荷等于零,卖方的鲁棒最优溢价规则等于买方最优扭曲概率下的净溢价。这两个重要的结果推广了我们在[Cao, J., Li, D., Young, V. R. & Zou, B.(2022)]中得到的结果。模型模糊下保险的Stackelberg微分对策。保险:数学与经济,106,128-145。在平方误差散度下。
Stackelberg differential game for insurance under model ambiguity: general divergence
We solve a Stackelberg differential game between a buyer and a seller of insurance policies, in which both parties are ambiguous about the insurable loss. Both the buyer and seller maximize their expected wealth, plus a penalty term that reflects ambiguity, over an exogenous random horizon. Under a mean-variance premium principle and a general divergence that measures the players' ambiguity, we obtain the Stackelberg equilibrium semi-explicitly. Our main results are that the optimal variance loading equals zero and that the seller's robust optimal premium rule equals the net premium under the buyer's optimally distorted probability. Both of these important results generalize those we obtained in [Cao, J., Li, D., Young, V. R. & Zou, B. (2022). Stackelberg differential game for insurance under model ambiguity. Insurance: Mathematics and Economics, 106, 128–145.] under squared-error divergence.
期刊介绍:
Scandinavian Actuarial Journal is a journal for actuarial sciences that deals, in theory and application, with mathematical methods for insurance and related matters.
The bounds of actuarial mathematics are determined by the area of application rather than by uniformity of methods and techniques. Therefore, a paper of interest to Scandinavian Actuarial Journal may have its theoretical basis in probability theory, statistics, operations research, numerical analysis, computer science, demography, mathematical economics, or any other area of applied mathematics; the main criterion is that the paper should be of specific relevance to actuarial applications.