2019
DOI: 10.3390/risks7020055
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Model Efficiency and Uncertainty in Quantile Estimation of Loss Severity Distributions

Abstract: Quantiles of probability distributions play a central role in the definition of risk measures (e.g., value-at-risk, conditional tail expectation) which in turn are used to capture the riskiness of the distribution tail. Estimates of risk measures are needed in many practical situations such as in pricing of extreme events, developing reserve estimates, designing risk transfer strategies, and allocating capital. In this paper, we present the empirical nonparametric and two types of parametric estimators of quan… Show more

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