Robust importance sampling for some typical types of utility-based shortfall risk measures using exponential twisting and kernel density techniques |
| |
Authors: | Quansheng Gao Kang Zhou Junyong Li |
| |
Affiliation: | School of Mathematics and Computer Science, Wuhan Polytechnic University, Wuhan, People’s Republic of China |
| |
Abstract: | A robust algorithm for utility-based shortfall risk (UBSR) measures is developed by combining the kernel density estimation with importance sampling (IS) using exponential twisting techniques. The optimal bandwidth of the kernel density is obtained by minimizing the mean square error of the estimators. Variance is reduced by IS where exponential twisting is applied to determine the optimal IS distribution. Conditions for the best distribution parameters are derived based on the piecewise polynomial loss function and the exponential loss function. The proposed method not only solves the problem of sampling from the kernel density but also reduces the variance of the UBSR estimator. |
| |
Keywords: | Utility-based shortfall risk measures kernel density importance sampling |
|