Uploaded by Ishan Tharaka

Proposal Bibilography

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Bibliography
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P. Nanthakumaran and C. D. Tilakaratne, ‘A comparison of accuracy of forecasting models:
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A. Grosman, Y. Rahulamathavn, P. Suryawanshi, and Y. Rahulamathavan, ‘Multi-modal
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J. Juwairiah, Winaldi Ersa Haidar, and Heru Cahya Rustamaji, ‘Prediction of IDR-USD
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no. 2, pp. 59–69, Nov. 2022, doi: 10.25139/ijair.v4i2.5259.
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M. Yasir et al., ‘An intelligent event-sentiment-based daily foreign exchange rate
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E. Yakak, U. Ugurlu, and O. Tas, ‘Using artificial neural network and a statistical method
for the estimation of Euro/Turkish Lira exchange rate’, Pressacademia, vol. 7, no. 1, pp.
414–417, Sep. 2018, doi: 10.17261/pressacademia.2018.926.
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E. Zargany and A. Ahmadi, ‘A new modular neural network approach for exchange rate
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Rates Using Artificial Neural Networks: A Study on Selected Sri Lankan Foreign Exchange
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[22]
P. Nanthakumaran and C. D. Tilakaratne, ‘Financial Time Series Forecasting Using
Empirical Mode Decomposition and FNN: A Study on Selected Foreign Exchange Rates’,
3
International Journal on Advances in ICT for Emerging Regions (ICTer), vol. 11, no. 1, pp.
1–12, Aug. 2018, doi: 10.4038/icter.v11i1.7194.
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