Abstract

Accurately forecasting the movement of exchange rates is of interest in a variety of fields, such as international business, financial management, and monetary policy, though this is not an easy task due to dramatic fluctuations caused by political and economic events. In this study, we develop a new forecasting approach referred to as FSPSOSVR, which is able to accurately predict exchange rates by combining particle swarm optimization (PSO), random forest feature selection, and support vector regression (SVR). PSO is used to obtain the optimal SVR parameters for predicting exchange rates. Our analysis involves the monthly exchange rates from January 1971 to December 2017 of seven countries including Australia, Canada, China, the European Union, Japan, Taiwan, and the United Kingdom. The out-of-sample forecast performance of the FSPSOSVR algorithm is compared with six competing forecasting models using the mean absolute percentage error (MAPE) and root mean square error (RMSE), including random walk, exponential smoothing, autoregressive integrated moving average (ARIMA), seasonal ARIMA, SVR, and PSOSVR. Our empirical results show that the FSPSOSVR algorithm consistently yields excellent predictive accuracy, which compares favorably with competing models for all currencies. These findings suggest that the proposed algorithm is a promising method for the empirical forecasting of exchange rates. Finally, we show the empirical relevance of exchange rate forecasts arising from FSPSOSVR by use of foreign exchange carry trades and find that the proposed trading strategies can deliver positive excess returns of more than 3% per annum for most currencies, except for AUD and NTD.

Highlights

  • Forecasting the movement of exchange rates has long been a hot topic in various application fields, attracting the interest of academics, financial traders, and monetary authorities alike

  • All the data were collected from the International Monetary Fund’s International Financial Statistics, detail refer to the Supplementary Materials

  • We developed an FSPSOSVR algorithm to forecast the exchange rates of seven countries, including the three worldwide major currencies including the euro, the Japanese yen, and the Chinese renminbi

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Summary

Introduction

Forecasting the movement of exchange rates has long been a hot topic in various application fields, attracting the interest of academics, financial traders, and monetary authorities alike. For foreign exchange traders and stock market investors, the ability to accurately forecast exchange rates is helpful in reducing risk and maximizing returns from transactions [1,2]. From the point of view of monetary authorities, reliable exchange rate forecasting contributes to the management of exchange rates and conduction of monetary policies. When a government uses monetary policies such as cutting interest rates to stimulate the economy, this will increase the income and demand for the imported goods of a country, appreciating the currency, which will negatively affect the competitiveness of exported goods.

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