操作风险损失严重性评估的学习模型

Chawis Taweerojkulsri, Y. Limpiyakorn
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引用次数: 0

摘要

组织内确定的风险、缺陷和其他问题应根据其严重性和重要性进行评价和评估。操作风险是银行和金融服务界的风险类别之一。它被定义为由于内部流程、人员和系统不充分或失败或外部事件导致的损失风险。基于专家意见的情景分析和风险评估应经常通过将其与一段时间内可获得的实际损失数据进行比较来验证和重新评估。相反,本文提出了一种利用反向传播神经网络技术进行操作风险定量评估的方法。多种风险原因和由此造成的损失形成了一个相互依赖的网络,作为一个学习模型。从专家判断中收集的风险情景代表因果链和影响的训练实例。对于有业务损失数据的成熟组织,可以用输出模型代替专家评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Learning Model for Assessing Loss Severity of Operational Risk
Risks, deficiencies and other issues identified within the organization should be evaluated and assessed with regard to their severity and significance. Operational risk is one of the risk categories within the banking and financial services community. It is defined as the risk of loss resulting from inadequate or failed internal processes, people and systems or from external events. Scenario analyses and risk assessments based on expert opinion should be frequently validated and reassessed by comparing them to actual loss data available over time. On contrary, this paper presents a quantitative operational risk assessment using the technique of backpropagation neural network. The multiple risk causes and resulting loss form a network of interdependencies as a learning model. The risk scenarios collected from expert judgment represents training instances of causal chains and effects. The output model could be used as the substitute of expert assessments for the mature organizations where operational loss data are available.
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