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Bootstrap Algorithms for Risk Models with Auxiliary Variable and Complex Samples

机译:具有辅助变量和复杂样本的风险模型的Bootstrap算法

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Resampling methods are often invoked in risk modelling when the stability of estimators of model parameters has to be assessed. The accuracy of variance estimates is crucial since the operational risk management affects strategies, decisions and policies. However, auxiliary variables and the complexity of the sampling design are seldom taken into proper account in variance estimation. In this paper bootstrap algorithms for finite population sampling are proposed in presence of an auxiliary variable and of complex samples. Results from a simulation study exploring the empirical performance of some bootstrap algorithms are presented.
机译:当必须评估模型参数的估计值的稳定性时,经常在风险建模中调用重采样方法。方差估计的准确性至关重要,因为操作风险管理会影响策略,决策和政策。但是,在方差估计中很少考虑辅助变量和抽样设计的复杂性。在本文中,提出了一种在存在辅助变量和复杂样本的情况下用于有限总体抽样的自举算法。提出了探索一些自举算法的经验性能的仿真研究结果。

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