Foreign currency exchange rate prediction using neuro-fuzzy systems
Foreign currency exchange rate prediction using neuro-fuzzy systems
The complex nature of the foreign exchange (FOREX) market along with the increased interest towards the currency exchange market has prompted extensive research from various academic disciplines. With the inclusion of more in-depth analysis and forecasting methods, traders will be able to make an informed decision when trading. Therefore, an approach incorporating the use of historical data along with computational intelligence for analysis and forecasting is proposed in this paper. Firstly, the Gaussian Mixture Model method is applied for data partitioning on historical observations. While the antecedent part of the neuro-fuzzy system of AnYa type is initialised by the partitioning result, the consequent part is trained using the fuzzily weighted RLS algorithm based on the same data. Numerical examples based on the real currency exchange data demonstrated that the proposed approach trained with historical data produce promising results when used to forecast the future foreign exchange rates over a long-term period. Although implemented in an offline environment, it could potentially be utilised in real-time application in the future.
232-238
Leng Yong, Yoke
2d50e782-d774-4055-89b0-ca1d32f742e5
Lee, Yunli
6c4e23b1-d13e-427a-ba46-1c8b369d0cac
Gu, Xiaowei
71df319d-c3b6-4959-9696-b6a2eeba3bad
Angelov, Plamen
30ed50c8-95c0-44c8-aa44-bef2a25e2fb5
Ngo, David Chek Ling
bf68d125-3209-44eb-bd08-3ff54cc14b80
Shafipour Yourdshahi, Elnaz
a2e1dea9-d3c0-4288-afdc-197df65f2556
Leng Yong, Yoke
2d50e782-d774-4055-89b0-ca1d32f742e5
Lee, Yunli
6c4e23b1-d13e-427a-ba46-1c8b369d0cac
Gu, Xiaowei
71df319d-c3b6-4959-9696-b6a2eeba3bad
Angelov, Plamen
30ed50c8-95c0-44c8-aa44-bef2a25e2fb5
Ngo, David Chek Ling
bf68d125-3209-44eb-bd08-3ff54cc14b80
Shafipour Yourdshahi, Elnaz
a2e1dea9-d3c0-4288-afdc-197df65f2556
Leng Yong, Yoke, Lee, Yunli, Gu, Xiaowei, Angelov, Plamen, Ngo, David Chek Ling and Shafipour Yourdshahi, Elnaz
(2018)
Foreign currency exchange rate prediction using neuro-fuzzy systems.
Procedia Computer Science, 144, .
(doi:10.1016/j.procs.2018.10.523).
Abstract
The complex nature of the foreign exchange (FOREX) market along with the increased interest towards the currency exchange market has prompted extensive research from various academic disciplines. With the inclusion of more in-depth analysis and forecasting methods, traders will be able to make an informed decision when trading. Therefore, an approach incorporating the use of historical data along with computational intelligence for analysis and forecasting is proposed in this paper. Firstly, the Gaussian Mixture Model method is applied for data partitioning on historical observations. While the antecedent part of the neuro-fuzzy system of AnYa type is initialised by the partitioning result, the consequent part is trained using the fuzzily weighted RLS algorithm based on the same data. Numerical examples based on the real currency exchange data demonstrated that the proposed approach trained with historical data produce promising results when used to forecast the future foreign exchange rates over a long-term period. Although implemented in an offline environment, it could potentially be utilised in real-time application in the future.
More information
e-pub ahead of print date: 21 November 2018
Additional Information:
© 2018 The Author(s). Published by Elsevier B.V.
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Local EPrints ID: 469567
URI: http://eprints.soton.ac.uk/id/eprint/469567
ISSN: 1877-0509
PURE UUID: d4e631cd-99fb-479c-aa8b-0583648aac7c
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Date deposited: 20 Sep 2022 16:37
Last modified: 16 Mar 2024 21:10
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Contributors
Author:
Yoke Leng Yong
Author:
Yunli Lee
Author:
Xiaowei Gu
Author:
Plamen Angelov
Author:
David Chek Ling Ngo
Author:
Elnaz Shafipour Yourdshahi
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