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Next, in order to control for the cross-country differences in the sample, panel regressions with fixed effects are conducted. The analysis shows that all coefficients on the misalignment variables have negative signs and are statistically significant for all horizons. Controlling for fixed effects increases the predictive power of the assessments significantly. For example, 58% of the IMF misalignment gap is closed after two years when country-specific factors are taken into account. Furthermore, the ERER misalignment gap has the highest coefficient value in absolute value, together with the highest R-squares. According to the estimation, 59% of the misalignment gap diagnosed by the ERER misalignment is closed after two years if we control for country-specific factors. On the other hand, the predictive power of the MB and the ES misalignments is considerably weaker, with lower R-squares and lower coefficient values. This finding suggests that the predictive power of the IMF misalignment is due to the high predictive power of the ERER misalignment.
Using other empirical models in the paper, I also show that the assessments are better at predicting future exchange rate movements in advanced economies than in emerging market economies. Controlling for the exchange rate regime does not yield different results. Furthermore, the assessments have higher predictive performance in open economies than in closed economies. Last but not least, safe haven currencies close the misalignment gap predicted by the models faster than other currencies.
Conclusion
These findings suggest that while movements of nominal exchange rates in the short term are notoriously difficult to predict, exchange rate models based on macroeconomic fundamentals can explain real effective exchange rate movements in the medium term surprisingly well.
References
Lee, J, G M Milesi-Ferretti, J Ostry, A Prati, and L A Ricci (2008) “Exchange rate assessments: CGER methodologies”, IMF Occasional Paper, No 261.
Meese, R A and K Rogoff (1983a) “Empirical exchange rate models of the seventies: Do they fit out of sample?”, Journal of International Economics, 14: 3-24.
Meese, R A and K Rogoff (1983b) “The out-of sample failure of empirical exchange rates: Sampling error or misspecification?”, in J Frenkel (ed), Exchange rates and international macroeconomics, pp 67–105, Chicago: NBER and University of Chicago Press.
Phillips, S, L Catão, L Ricci, R Bems, M Das, J Di Giovanni, D F Unsal, M Castillo, J Lee, J Rodriguez and M Vargas (2013) “The external balance assessment (EBA) methodology”, IMF, Working Paper 13/272.
Yeşin, P (2016) “Exchange rate predictability and state-of-the-art models”, Swiss National Bank, SNB Working Paper 16-02.
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