Forecasting vault cash with an extreme value long short-term memory network

IF 5.5 Q1 MANAGEMENT
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引用次数: 0

Abstract

Effective cash management is key in banking operations and has implications for cost control, customer service, and risk management. As transactions become more diverse, manual forecasting methods have become inadequate for accurate vault cash forecasting, which involves extensive data analysis. To address this challenge, the banking industry has adopted FinTech tools based on big data and deep learning for various client services. These methods are generally accurate but perform poorly in cases with extreme events, for which data are scarce. In this study, we propose a time series prediction model with long short-term memory and an attention mechanism that effectively predicts the presence of extreme values. We applied extreme value theory to define the extreme value loss for extreme situations and use a sliding window to process time series data. The enhanced extreme value loss function in our model yields improved prediction accuracy for time series data.
We evaluated the proposed model against previous methods in evaluation experiments on data from three branches of a commercial bank in Taiwan, where the vault cash data of each exhibited extreme values. The proposed model was highly accurate: it had a lower mean absolute percentage error and higher trend accuracy than competing methods on a majority of time series, and it was also more accurate in predicting extreme values in time series data.
用极值长短期记忆网络预测金库现金
有效的现金管理是银行运营的关键,对成本控制、客户服务和风险管理都有影响。随着交易日益多样化,人工预测方法已不足以准确预测金库现金,因为这涉及大量数据分析。为了应对这一挑战,银行业采用了基于大数据和深度学习的金融科技工具来提供各种客户服务。这些方法一般都很准确,但在极端事件的情况下表现不佳,因为这方面的数据很少。在本研究中,我们提出了一种具有长期短期记忆和注意力机制的时间序列预测模型,它能有效预测极端值的存在。我们应用极值理论来定义极端情况下的极值损失,并使用滑动窗口来处理时间序列数据。我们在台湾一家商业银行三家分行的数据评估实验中,对所提出的模型与之前的方法进行了对比评估,每家分行的金库现金数据都呈现出极端值。所提出的模型具有很高的准确性:与其他方法相比,它在大多数时间序列上的平均绝对百分比误差更低,趋势准确性更高,而且在预测时间序列数据的极端值方面也更加准确。
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来源期刊
CiteScore
8.00
自引率
4.50%
发文量
47
期刊介绍: Asia Pacific Management Review (APMR), peer-reviewed and published quarterly, pursues to publish original and high quality research articles and notes that contribute to build empirical and theoretical understanding for concerning strategy and management aspects in business and activities. Meanwhile, we also seek to publish short communications and opinions addressing issues of current concern to managers in regards to within and between the Asia-Pacific region. The covered domains but not limited to, such as accounting, finance, marketing, decision analysis and operation management, human resource management, information management, international business management, logistic and supply chain management, quantitative and research methods, strategic and business management, and tourism management, are suitable for publication in the APMR.
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