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Open Access

LSTM Based Reserve Prediction for Bank Outlets

Yu LiuShuting DongMingming LuJianxin Wang( )
School of Information Science and Engineering, Central South University, Changsha 410083, China.
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Abstract

Reserve allocation is a significant problem faced by commercial banking businesses every day. To satisfy the cash requirement of customers and abate the vault cash pressure, commercial banks need to appropriately allocate reserves for each bank outlet. Excessive reserve would impact the revenue of bank outlets. Low reserves cannot guarantee the successful operation of bank outlets. Considering the reserve requirement is effected by the past cash balance, we deal the reserve allocation problem as a time series prediction problem, and the Long Short Time Memory (LSTM) network is adapted to solve it. In addition, the proposed LSTM prediction model regards date property, which can affect the cash balance, as a primary factor. The experiment results show that our method outperforms some existing traditional methods.

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Tsinghua Science and Technology
Pages 77-85
Cite this article:
Liu Y, Dong S, Lu M, et al. LSTM Based Reserve Prediction for Bank Outlets. Tsinghua Science and Technology, 2019, 24(1): 77-85. https://doi.org/10.26599/TST.2018.9010007

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Received: 17 July 2017
Accepted: 07 August 2017
Published: 08 November 2018
© The author(s) 2019
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