On the prediction of dispenser status in ATM using gradient boosting method

V. Shcherbitsky, A. Panachev, M. Medvedeva, E. Kazakova
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引用次数: 1

Abstract

The purpose of this study is to solve the problem of determining the status of an ATM to increase its resiliency, which will reduce the reputational and financial losses of banking structures. The tools for the goal achieving were machine learning methods such as gradient boosting model (on the example of Russian Sberbank ATM data). The study showed good enough accuracy in the problem of binary classification of the status of ATM dispensers, and also revealed the importance of time characteristics of the occurrence of errors and transactions. The methodology has practical value; it is possible to use it outside the banking sector due to the flexibility of the chosen model.The purpose of this study is to solve the problem of determining the status of an ATM to increase its resiliency, which will reduce the reputational and financial losses of banking structures. The tools for the goal achieving were machine learning methods such as gradient boosting model (on the example of Russian Sberbank ATM data). The study showed good enough accuracy in the problem of binary classification of the status of ATM dispensers, and also revealed the importance of time characteristics of the occurrence of errors and transactions. The methodology has practical value; it is possible to use it outside the banking sector due to the flexibility of the chosen model.
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梯度升压法预测ATM机点胶机状态
本研究的目的是解决确定ATM状态的问题,以增加其弹性,这将减少银行结构的声誉和财务损失。实现目标的工具是机器学习方法,如梯度增强模型(以俄罗斯联邦储蓄银行ATM数据为例)。研究表明,自动柜员机状态的二元分类问题具有足够的准确性,同时也揭示了错误发生和交易发生的时间特征的重要性。该方法具有实用价值;由于所选模型的灵活性,可以在银行部门之外使用它。本研究的目的是解决确定ATM状态的问题,以增加其弹性,这将减少银行结构的声誉和财务损失。实现目标的工具是机器学习方法,如梯度增强模型(以俄罗斯联邦储蓄银行ATM数据为例)。研究表明,自动柜员机状态的二元分类问题具有足够的准确性,同时也揭示了错误发生和交易发生的时间特征的重要性。该方法具有实用价值;由于所选模型的灵活性,可以在银行部门之外使用它。
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