Skip to main content

Bayesian estimation of truncated data with applications to operational risk measurement

Quantitative Finance, Volume 14, Issue 5, 2014, pp853-888 Data insufficiency and reporting threshold are two main issues in operational risk modelling. When these conditions are present, maximum likelihood estimation (MLE) may produce very poor parameter estimates. In this study, we first investigate four methods to estimate the parameters of tr...
Author(s)
Xiaoping Zhou, Rosella Giacometti, Frank J. Fabozzi, Ann H. Tucker

Quantitative Finance, Volume 14, Issue 5, 2014, pp853-888

Data insufficiency and reporting threshold are two main issues in operational risk modelling. When these conditions are present, maximum likelihood estimation (MLE) may produce very poor parameter estimates. In this study, we first investigate four methods to estimate the parameters of truncated distributions for small samples—MLE, expectation-maximization algorithm, penalized likelihood estimators, and Bayesian methods. Without any proper prior information, Jeffreys’ prior for truncated distributions is used. Based on a simulation study for the log-normal distribution, we find that the Bayesian method gives much more credible and reliable estimates than the MLE method. Finally, an application to the operational loss severity estimation using real data is conducted using the truncated log-normal and log-gamma distributions. With the Bayesian method, the loss distribution parameters and value-at-risk measure for every cell with loss data can be estimated separately for internal and external data. Moreover, confidence intervals for the Bayesian estimates are obtained via a bootstrap method.

Keywords: Bayesian estimation, Operational risk,Truncated data, Jeffreys’ prior

See more