
handle: 1866/12275
Empirical evidence suggests that ambiguity is prevalent in insurance pricing and underwriting, and that often insurers tend to exhibit more ambiguity than the insured individuals (e.g., [23]). Motivated by these findings, we consider a problem of demand for insurance indemnity schedules, where the insurer has ambiguous beliefs about the realizations of the insurable loss, whereas the insured is an expected-utility maximizer. We show that if the ambiguous beliefs of the insurer satisfy a property of compatibility with the non-ambiguous beliefs of the insured, then there exist optimal monotonic indemnity schedules. By virtue of monotonicity, no ex-post moral hazard issues arise at our solutions (e.g., [25]). In addition, in the case where the insurer is either ambiguity-seeking or ambiguity-averse, we show that the problem of determining the optimal indemnity schedule reduces to that of solving an auxiliary problem that is simpler than the original one in that it does not involve ambiguity. Finally, under additional assumptions, we give an explicit characterization of the optimal indemnity schedule for the insured, and we show how our results naturally extend the classical result of Arrow [5] on the optimality of the deductible indemnity schedule.
Deductible, Ambiguity, optimal insurance, deductible, ambiguity, choquet integral, distorted probabilities, Distorted probabilities, Optimal insurance; Deductible; Ambiguity; Choquet integral; Distorted probabilities, Choquet integral, Optimal insurance, jel: jel:G22
Deductible, Ambiguity, optimal insurance, deductible, ambiguity, choquet integral, distorted probabilities, Distorted probabilities, Optimal insurance; Deductible; Ambiguity; Choquet integral; Distorted probabilities, Choquet integral, Optimal insurance, jel: jel:G22
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