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首页> 外文期刊>The Journal of Operational Risk >A comparison of alternative mixing models for external data in operational risk
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A comparison of alternative mixing models for external data in operational risk

机译:运行风险中外部数据的替代混合模型比较

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摘要

When measuring its operational value-at-risk, a bank needs to pay attention when including external data in its analysis. Without careful consideration of the specific nature of the bank's risk there can be relevant systemic risk implications as pointed out by Torresetti and Nordio. Based on real operational risk data, we study alternative mixing models for external data for a particular risk class and show how scaling through a proxy for size for this risk class, as done by Shih, Samad-Khan and Medapa, does not seem to be a sensible technique for incorporating external data. Moving to more sophisticated mixing models, we show how kernel-modified estimators and Bayesian estimators represent an improvement. We also show how the technique outlined by Torresetti and Nordio is capable of further improving the treatment of external data in those instances where the case can be made for a distinct power law governing the tails of the internal and external data.
机译:在衡量其运营风险价值时,银行在分析中包括外部数据时需要注意。如Torresetti和Nordio所指出的,如果不仔细考虑银行风险的特殊性质,可能会产生相关的系统性风险。根据实际的操作风险数据,我们研究了特定风险类别的外部数据的替代混合模型,并显示了像Shih,Samad-Khan和Medapa所做的那样,如何通过代理替换此风险类别的大小来进行缩放合并外部数据的明智技术。转向更复杂的混合模型,我们展示了内核修改的估计量和贝叶斯估计量如何表示一种改进。我们还展示了Torresetti和Nordio概述的技术如何能够在那些可以控制内部和外部数据尾部的独特幂律的情况下进一步改善对外部数据的处理。

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