Dependent bootstrapping for value-at-risk and expected shortfall

被引:0
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作者
Ian Laker
Chun-Kai Huang
Allan Ernest Clark
机构
[1] University of Cape Town,Department of Statistical Sciences
来源
Risk Management | 2017年 / 19卷
关键词
Block bootstrap; Stationary bootstrap; Value-at-risk; Expected shortfall; GARCH; C13; C14; C32; C52; C53; G12; G17;
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摘要
Estimation in extreme financial risk is often faced with challenges such as the need for adequate distributional assumptions, considerations for data dependencies, and the lack of tail information. Bootstrapping provides an alternative that overcomes some of these challenges. It does not assume a distributional form and asymptotically replicates the empirical density for resampled data. Moreover, advanced bootstrapping can cater for dependencies and stationarity in the data. In this paper, we evaluate the use of dependent bootstrapping, both for the original financial time series and for its GARCH innovations (under the Gaussian and Student t noise assumptions), in forecasting value-at-risk and expected shortfall. We also assess the effect of using different window sizes for these procedures. The two datasets used are daily returns of the S&P500 from NYSE and the ALSI from JSE.
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页码:301 / 322
页数:21
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