Abstract
This article assesses the impact of model uncertainty on Value-at-Risk calculations. We assume that the true, yet unknown, model possesses certain qualitative properties, such as unimodality and symmetry, possibly after a concave transformation (e.g., log-symmetry). Additionally, we consider available information on the median, interpercentile range, and moments. We then derive the maximum possible Value-at-Risk for a model that adheres to this available information. This article provides a method to measure potential errors when using Value-at-Risk with misspecified loss models. As a result, financial and actuarial decision makers can gain a better understanding of model uncertainties and the dynamics of model outcomes, leading to better-informed decisions. Moreover, this article assists banks and insurance companies in allocating the right amount of reserves necessary to address model risk, thus reducing the need for excessive conservatism.
Published Version
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