Abstract

This paper employs the R software in identifying the most suitable ARMA model for forecasting the growth rate of the exchange rate between the US dollar and a unit of the British pound. The data is systematically split into two distinct periods identified as the in-sample period and the out of sample period. The best model selected for the in-sample period is used to make forecasts for the out of sample period. Both traditional and rolling window forecasting methods are employed. This research uses the MSE, MAE, MAPE and correct sign prediction criterion to compare the forecasting performance of the rolling window forecasting method and the traditional forecasting method. The results obtained suggest that the traditional forecasting method performs better judging by MSE, MAE and MAPE. In other words, the traditional forecasting method is more suitable for predicting the magnitude (i.e., size) by which the US /UK exchange rate changes over time. However, the results also suggest that the rolling window forecasting method performs better based on the correct sign prediction criterion. In other words, the rolling window forecasting method is more appropriate for predicting the changes in the sign of the US /UK exchange rate.

Highlights

  • This research employs the R software in identifying the most suitable autoregressive moving average (ARMA) model for forecasting the growth rate of the exchange rate between the US dollar and a unit of the British pound

  • The whole dataset available contains observations from January 1971 to February 2020, all observations for January 1971 are excluded. This is due to the fact that the growth rate of the $/£ exchange rate is measured by taking the first difference of its logarithmic transformation and this leads to losing the growth rate for January 1971

  • It is important to observe that the Dickey Fuller (DF) statistic does not follow a t-distribution in testing if βis equal to zero because Xt−1 – which βis the coefficient of – may have a unit root, yet the results provided by a tdistribution will be highly biased in the presence of a unit root

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Summary

Introduction

This research employs the R software in identifying the most suitable ARMA model for forecasting the growth rate of the exchange rate between the US dollar and a unit of the British pound (denoted as $/£). The predicted values obtained from the rolling window forecasting method are plotted against the true values of the out-of-sample period. If the t-statistic is less than the test critical value, we do not reject the null hypothesis that βis equal to zero and as such the relevant series has a unit root.

Results
Conclusion
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