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Predicting Waiting Time Overflow on Bank Teller Queues

机译:预测银行出纳员队列上的等待时间溢出

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This study proposes a predictive model to detect the delay in bank teller queues. Since there are penalties and fines applied to the branches that leave their clients waiting for a long time, detecting these cases as early as possible is essential. Four models were tested: one using a Queuing Theory's formula and the other three using Data Mining algorithms - Deep Learning (DL), Gradient Boost Machine (GBM), and Random Forest (RF). The results indicated the GBM model as the most efficient, with an accuracy of 97% and a F1-measure of 75%.
机译:这项研究提出了一种预测模型来检测银行出纳员队列中的延迟。由于对分支机构施加了罚款和罚款,使他们的客户等待很长时间,因此必须尽早发现这些情况。测试了四个模型:一个使用队列理论的公式,另一个使用数据挖掘算法-深度学习(DL),梯度提升机(GBM)和随机森林(RF)。结果表明,GBM模型效率最高,准确度为97%,F1测度为75%。

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