10338_A-simulation-comparison-of-quantile-approximation-techniques-for-compound-distributions
Authors: de Jongh, P.J., de Wet, T., Panman, K. and Raubenheimer, H.
Abstract: Many banks currently use the loss distribution approach (LDA) for estimating economic and regulatory capital for operational risk under Basel’s advanced measurement approach. The LDA requires the modeling of the aggregate loss distribution in each operational risk category (ORC), among others. The aggregate loss distribution is a compound distribution resulting from a random sum of losses, where the losses are distributed according to some severity distribution, and the number (of losses) is distributed according to some frequency distribution. In order to estimate the economic or regulatory capital in a particular ORC, an extreme quantile of the aggregate loss distribution has to be estimated from the fitted severity and frequency distributions. Since a closed-form expression for the quantiles of the resulting estimated compound distribution does not exist, the quantile is usually approximated using a brute force Monte Carlo simulation, which is computationally intensive. However, a number of numerical approximation techniques have been proposed to lessen the computational burden. Such techniques include Panjer recursion, the fast Fourier transform and different orders of both the single-loss approximation and perturbative approximation.
Get article
Abstract: Many banks currently use the loss distribution approach (LDA) for estimating economic and regulatory capital for operational risk under Basel’s advanced measurement approach. The LDA requires the modeling of the aggregate loss distribution in each operational risk category (ORC), among others. The aggregate loss distribution is a compound distribution resulting from a random sum of losses, where the losses are distributed according to some severity distribution, and the number (of losses) is distributed according to some frequency distribution. In order to estimate the economic or regulatory capital in a particular ORC, an extreme quantile of the aggregate loss distribution has to be estimated from the fitted severity and frequency distributions. Since a closed-form expression for the quantiles of the resulting estimated compound distribution does not exist, the quantile is usually approximated using a brute force Monte Carlo simulation, which is computationally intensive. However, a number of numerical approximation techniques have been proposed to lessen the computational burden. Such techniques include Panjer recursion, the fast Fourier transform and different orders of both the single-loss approximation and perturbative approximation.
Get article