Exchange rate prediction with multilayer perceptron neural network using gold price as external factor


Mohammad Fathian and Arash N. Kia


In this paper, the problem of predicting the exchange rate time series in the foreign exchange rate market is going to be solved using a time-delayed multilayer perceptron neural network with gold price as external factor. The input for the learning phase of the artificial neural network are the exchange rate data of the last five days plus the gold price in two different currencies of the exchange rate as the external factor for helping the artificial neural network improving its forecast accuracy. The five-day delay has been chosen because of the weekly cyclic behavior of the exchange rate time series with the consideration of two holidays in a week. The result of forecasts are then compared with using the multilayer peceptron neural network without gold price external factor by two most important evaluation techniques in the literature of exchange rate prediction. For the experimental analysis phase, the data of three important exchange rates of EUR/USD, GBP/USD, and USD/JPY are used.


DOI: j.msl.2011.12.008

Keywords: Forecasting ,Artificial neural networks Multilayer perceptron ,Exchange rate ,Gold price ,Time series

How to cite this paper:

Fathian, M & Kia, A. (2012). Exchange rate prediction with multilayer perceptron neural network using gold price as external factor.Management Science Letters, 2(2), 561-570.


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