Abstract
One of the problems related to the banking system is Automated Teller Machine (ATM) cash demand forecasting. If an ATM faces a shortage of cash, it will face the decline of bank popularity and in turn will have some costs and the bank will encounter decreasing customers use of these systems. On the other hand, if the bank faces cash trapping at an ATM, regarding inflation in Iran, cash trapping and the lack of using it will have a negative impact on bank profitability. The aim of this study is to predict accurately to eliminate the posed double costs. Since the information related to the amount of cash is daily, each ATM will have a behavior as time series and also because the aim of this study is to predict the demand for cash from the 1056 ATMs, we are facing data from the type of panel. The methods that are used for forecasting ATM cash demand in this research include: forecasting by statistical method, artificial neural network intelligent method, Support vector machine and Convolutional neural network. We will compare the results of these methods and show that intelligent methods in comparison with statistical analysis have higher accuracy.
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References
Jadwal, P.K.; Jain, S.; Gupta, U.; Khanna, P.: K-means clustering with neural networks for ATM cash repository prediction. In: International Conference on Information and Communication Technology for Intelligent Systems. pp. 588–596. (2017)
Venkatesh, K.; Ravi, V.; Prinzie, A.; Van den Poel, D.: Cash demand forecasting in ATMs by clustering and neural networks. Eur. J. Oper. Res. 232, 383–392 (2014)
Simutis, R.; Delijonas, D.; Bastina, L.; Friman, J.; Drobinov, P.: Optimization of cash management for ATM network. Inf. Technol. Control. 36, 117–121 (2007)
Catal, C.; Fenerci, A.; Ozdemir, B.; Gulmez, O.: Improvement of demand forecasting models with special days. Proc. Comput. Sci. 59, 262–267 (2015)
Simutis, R.; Dilijonas, D.; Bastina, L.: Cash demand forecasting for ATM using neural networks and support vector regression algorithms. In: 20th International Conference, EURO Mini Conference, “Continuous Optimization and Knowledge-Based Technologies” (EurOPT-2008), Selected Papers, Vilnius. pp. 416–421. (2008)
Ramírez, C.; Acuña, G.: Forecasting cash demand in ATM using neural networks and least square support vector machine. In: Progress in Pattern Recognition, Image Analysis, Computer Vision, and Applications. pp. 515–522. (2011)
Garcia Pedrero, A.; Gomez Gil, P.: Time series forecasting using recurrent neural networks and wavelet reconstructed signals. In: 20th International Conference on Electronics, Communications and Computer (CONIELECOMP), pp. 169–173. (2010)
Darwish, S.M.: A methodology to improve cash demand forecasting for ATM network. Int. J. Comput. Electr. Eng. 5, 405 (2013)
Zandevakili, M.; Javanmard, M.: Using fuzzy logic (type II) in the intelligent ATMs’ cash management. Int. Res. J. Appl. Basic Sci. 8, 1516–1519 (2014)
Borda, P.; Levajkovic, T.; Kresoja, M.; Marceta, M.; Mena, H.; Nikolic, M.; Stojancevic, T.: Optimization of ATM filling-in with cash. 99th European study group with industry, pp. 1–16 (2014)
Dandekar, P.V.; Ranade, K.M.: ATM cash flow management. Int. J. Innov. Manag. Technol. 6, 343 (2015)
Andrawis, R.R.; Atiya, A.F.; El-Shishiny, H.: Forecast combinations of computational intelligence and linear models for the NN5 time series forecasting competition. Int. J. Forecast. 27, 672–688 (2011)
Aseev, M.; Nemeshaev, S.; Nesterov, A.: Forecasting cash withdrawals in the ATM network using a combined model based on the holt-winters and markov chains. Int. J. Appl. Eng. Res. 11, 7577–7582 (2016)
Brooks, C.: Introductory Econometrics for Finance, pp. 487–509. Cambridge University Press (2014)
Palit, A.K.; Povovic, D.: Computational Intelligence in Time Series Forecasting, pp. 129–130. Springer (2005)
Theodoridis, S.; Koutroumbas, K.: Pattern Recognition, pp.151–196. Elsevier (1999)
Goodfellow, I.; Bengio, B.: Gurville A.: Deep Learning. MIT Press, Cambridge (2016)
Anandhi, V.; Manicka Chezian, R.: Support vector regression in forecasting. Int. J. Adv. Res. Comput. Commun. Eng. 2(10), 4148–4151 (2013)
Siami Namini, S.; Siami Namini, A.: Forecasting Economics and Financial Time Series: ARIMA vs. LSTM. (2018). arXiv:1803.06386
Zheng, J.; Zhang, G.: Research on exchange rate forecasting based on deep belief network. Neural Comput. Appl. (2017). https://doi.org/10.1007/s00521-017-3039-z
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Poorzaker Arabani, S., Ebrahimpour Komleh, H. The Improvement of Forecasting ATMs Cash Demand of Iran Banking Network Using Convolutional Neural Network. Arab J Sci Eng 44, 3733–3743 (2019). https://doi.org/10.1007/s13369-018-3647-7
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DOI: https://doi.org/10.1007/s13369-018-3647-7