Model Uncertainty in Operational Risk Modeling Due to Data Truncation: A Single Risk Case

Daoping Yu, V. Brazauskas
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引用次数: 5

Abstract

Over the last decade, researchers, practitioners, and regulators have had intense debates about how to treat the data collection threshold in operational risk modeling. Several approaches have been employed to fit the loss severity distribution: the empirical approach, the “naive” approach, the shifted approach, and the truncated approach. Since each approach is based on a different set of assumptions, different probability models emerge. Thus, model uncertainty arises. The main objective of this paper is to understand the impact of model uncertainty on the value-at-risk (VaR) estimators. To accomplish that, we take the bank’s perspective and study a single risk. Under this simplified scenario, we can solve the problem analytically (when the underlying distribution is exponential) and show that it uncovers similar patterns among VaR estimates to those based on the simulation approach (when data follow a Lomax distribution). We demonstrate that for a fixed probability distribution, the choice of the truncated approach yields the lowest VaR estimates, which may be viewed as beneficial to the bank, whilst the “naive” and shifted approaches lead to higher estimates of VaR. The advantages and disadvantages of each approach and the probability distributions under study are further investigated using a real data set for legal losses in a business unit (Cruz 2002).
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基于数据截断的操作风险建模中的模型不确定性:一个单一风险案例
在过去的十年中,研究人员、从业人员和监管机构就如何处理操作风险建模中的数据收集阈值进行了激烈的辩论。有几种方法被用来拟合损失严重性分布:经验方法、“朴素”方法、移位方法和截断方法。由于每种方法都基于一组不同的假设,因此出现了不同的概率模型。因此,产生了模型的不确定性。本文的主要目的是了解模型不确定性对风险价值(VaR)估计量的影响。为了做到这一点,我们从银行的角度出发,研究单一风险。在这种简化的情况下,我们可以解析地解决问题(当底层分布是指数分布时),并表明它揭示了基于模拟方法的VaR估计之间的相似模式(当数据遵循Lomax分布时)。我们证明,对于固定概率分布,截断方法的选择产生最低的VaR估计值,这可能被视为对银行有利,而“天真”和转移的方法导致更高的VaR估计值。每种方法的优缺点和所研究的概率分布使用实际数据集进一步调查在一个业务单位的法律损失(Cruz 2002)。
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