Affiliation:
1. Edo State University Uzairue
2. Wellspring University
3. Auchi Polytechnic
4. University of Calabar
5. Nigerian Army University Biu
6. University of Benin
Abstract
Given that volatility influences decisions about currency rates, monetary policy, and macroeconomic policy, it is crucial to predict and anticipate volatility in emerging economies. The study employed generalized autoregressive conditional heteroskedasticity (GARCH) asymmetric models to estimate and forecast exchange rate dynamics in developing countries. We found that South Africa model had similar variance and covariance proportion of 0.99356 percent and 0.995901 percent respectively and the exchange rate could rise or fall by 2 to 6 units of rand, in exchange for USD. In Kenya, exchange rates continually exhibited steady rise monthly with extremely low mean absolute percentage error of 0.01568 percent and this demonstrates how strongly the model predicts Kenya’s future currency rates while the variance chart supports absence of persistence. In Ghana, exchange rates are projected to increase significantly as 99.5 percent of unsystematic error was un accounted for in the model. Volatility is highly persistent in Nigeria; hence the forecasting model reported a high error rate by taking 1.06 percent of the symmetric error into cognizance. Kenya, Ghana, and Mauritius had asymmetry in currency volatility, revealing turbulence in exchange rates when the bad news hit the market. Hence, local currencies are rendered worthless in the foreign exchange market.
Subject
Earth and Planetary Sciences (miscellaneous),Management Science and Operations Research,Decision Sciences (miscellaneous),Strategy and Management
Reference65 articles.
1. Abounoori, E., & Zabol, M. (2020). Modelling gold volatility: Realised GARCH approach. Iranian Economic Review, 24(1), 299–311. https://doi.org/10.22059/ier.2020.74483
2. Abreu, R. J., Souza, R. M., & Oliveira, J. G. (2019). Applying singular spectrum analysis and ARIMA-GARCH for forecasting EUR/USD exchange rate. Revista de Administração Mackenzie, 20(4), 34–52. https://doi.org/10.1590/1678-6971/eramf190146
3. Adeoye, B. W., & Atanda, A. A. (2012). Exchange rate volatility in Nigeria: Consistency, persistency and severity analysis. CBN Journal of Applied Statistics, 2(2), 29–49. https://tinyurl.com/mr2syejk
4. Agiomirgianakis, G., Serenis, D., & Tsounis, N. (2014). Exchange rate volatility and tourist flows into Turkey. Journal of Economic Integration, 29(4), 700–725. https://doi.org/10.11130/jei.2014.29.4.700
5. Alagidede, P., & Ibrahim, M. (2017). On the causes and effects of exchange rate volatility on economic growth: Evidence from Ghana. Journal of African Business, 18(2), 169–193. https://doi.org/10.1080/15228916.2017.1247330