While the {estimation} of risk is an important question in the daily business of banking and insurance, many existing plug-in estimation procedures suffer from an unnecessary bias. This often leads to the underestimation of risk and negatively impacts backtesting results, especially in small sample cases. In this article we show that the link between estimation bias and backtesting can be traced back to the dual relationship between risk measures and the corresponding performance measures, and discuss this in reference to value-at-risk, expected shortfall and expectile value-at-risk. Motivated by the consistent underestimation of risk by plug-in procedures, we propose a new algorithm for bias correction and show how to apply it for generalized Pareto distributions to the i.i.d. setting and to a GARCH(1,1) time series. In particular, we show that the application of our algorithm leads to gain in efficiency when heavy tails or heteroscedasticity exists in the data.
翻译:虽然风险的{估计}是银行和保险日常业务中的一个重要问题,但许多现有的插头估计程序都存在不必要的偏差,这往往导致低估风险和对反测试结果的负面影响,特别是在小型抽样案例中。我们在本篇文章中表明,估计偏差和反测试之间的联系可以追溯到风险措施与相应的绩效措施之间的双重关系,并联系风险价值、预期短缺和预期值-风险-风险来讨论这一点。受插头程序对风险的一贯低估的驱使,我们提出了偏差纠正的新算法,并展示了如何将其应用于向i.d.d.设置和GARCH(1,1,1)时间序列的泛泛Pareto分布。我们特别表明,当数据中存在重尾巴或异体特性时,应用我们的算法会提高效率。