基于神经网络技术的银行操作风险临界水平评估

IF 0.4 Q4 MATHEMATICS, APPLIED
E. V. Chumakova, D. Korneev, M. Gasparian, Ilia S. Makhov
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引用次数: 0

摘要

本文研究了信贷机构在运用IT技术的过程中所产生的操作风险的控制问题。在银行风险中,操作风险占有特殊的地位,主要是因为它影响到银行活动的各个领域,并且难以与其他类型的风险区分开来。除其他外,由于技术系统和设备的停机或不正确操作,会产生操作风险。由于银行业务流程自动化程度的不断增长,新的IT风险组正在出现,它们可能对信贷机构的活动产生重大影响。这项工作的目的是使用Python中的高级Keras库创建一个人工神经网络,它自动控制已经出现的IT风险的临界级别。本文在分析与IT技术使用相关的风险事件的基础上,识别了进入神经网络输入的数据流并确定了其结构。本文还介绍了基于生成的数据集训练作者创建的神经网络的结果。使用智能方法来评估操作IT风险的临界级别,使您能够快速采取措施以最小化后果,从而减少直接和间接损失。因此,基于神经网络技术的操作风险管理自动化是当前信贷机构最迫切的任务之一。获得的结果是新的,可用于信贷机构在建立自动化系统的过程中监测和管理操作风险。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Assessment of the bank’s operational risk criticality level based on neural network technologies
The article is devoted to the issues of controlling the operational risks of a credit institution arising in the process of using IT technologies. Among banking risks, operational risk occupies a special place, primarily due to the fact, that it affects various areas of banking activity and is difficult to separate from other types of risk. Operational risks arise, among other things, as a result of downtime or incorrect operation of technical systems and equipment. Due to the constant growth in the degree of automation of banking business processes, new IT risk groups are emerging that can have a significant impact on the activities of a credit institution. The aim of the work is to create an artificial neural network using the high-level Keras library in Python, which automatically controls the level of criticality of the IT risk that has arisen. In the article, based on the analysis of risk events associated with the use of IT technologies, the data flows entering the input of the neural network is identified and its structure is determined. The paper also presents the results of training a neural network created by the authors based on the generated data sets. The use of intelligent methods for assessing the level of criticality of operational IT risk allows you to quickly take measures to minimize the consequences, and thus reduce direct and indirect losses. In connection with the above, the automation of operational risk management based on the use of neural network technologies is currently one of the most urgent tasks for credit institutions. The results obtained are new and can be used by credit institutions in the process of building automated systems for monitoring and managing operational risks.
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CiteScore
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