2014
DOI: 10.2139/ssrn.2394063
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Risk Margin Quantile Function via Parametric and Non-Parametric Bayesian Quantile Regression

Abstract: We develop quantile regression models in order to derive risk margin and to evaluate capital in non-life insurance applications. By utilizing the entire range of conditional quantile functions, especially higher quantile levels, we detail how quantile regression is capable of providing an accurate estimation of risk margin and an overview of implied capital based on the historical volatility of a general insurers loss portfolio. Two modelling frameworks are considered based around parametric and nonparametric … Show more

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