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A method for modelling operational risk with fuzzy cognitive maps and Bayesian belief networks

机译:基于模糊认知图和贝叶斯信念网络的操作风险建模方法

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摘要

A main concern of risk management in financial institutions is measurement of operational risk and its value at risk as a requirement of Basel II accord. Besides risk quantification, identifying causal mechanism leading to operational loss is necessary to plan risk mitigation activities. Bayesian belief networks (BBN) is a causal modelling method able to achieve both goals simultaneously. Eliciting BBN causal model and its parameters from expert knowledge is an alternative to data driven models in case of data scarcity. However, there is still a problem with parameter extraction for complex models with a number of multi parent and multi state nodes. In this paper, we proposed a method combining fuzzy cognitive maps (FCM) and BBN in order to improve BBN capability in modelling operational risks. In the first phase, a causal model is constructed by applying FCM and then a new migration method is proposed to translate FCM parameters to BBN ones. A case study of an Iranian private bank is then given to examine and validate the proposed method. (C) 2018 Elsevier Ltd. All rights reserved.
机译:金融机构风险管理的主要关注点是对运营风险及其风险价值的衡量,这是《巴塞尔协议II》所要求的。除了风险量化之外,识别导致运营损失的因果机制对于计划风险缓解活动也是必要的。贝叶斯信念网络(BBN)是一种能够同时实现两个目标的因果建模方法。在缺乏数据的情况下,从专家知识中剔除BBN因果模型及其参数是数据驱动模型的替代方法。但是,对于具有多个多父级和多状态节点的复杂模型,参数提取仍然存在问题。在本文中,我们提出了一种结合模糊认知图(FCM)和BBN的方法,以提高BBN在操作风险建模中的能力。在第一阶段,应用FCM构建因果模型,然后提出一种新的迁移方法,将FCM参数转换为BBN参数。然后给出了一个伊朗私人银行的案例研究,以检验和验证所提出的方法。 (C)2018 Elsevier Ltd.保留所有权利。

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