Uncertainty and specification challenges in exchange rates modeling under Bayesian model averaging Uncertainty & Specification in BMA Exchange Rate Models
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Abstract
Traditional econometric models often struggle to capture the complexities and uncertainties inherent in exchange rate movements. This study investigates the dynamic relationship between the Nigerian Naira exchange rate and key economic variables using Bayesian Model Averaging (BMA), offering a robust framework to address model uncertainty and specification challenges. By integrating multiple predictors, BMA enhances forecasting accuracy, providing valuable insights for policymakers, investors and businesses navigating Nigeria's volatile economic landscape. Analysing exchange rate movements from 2007 to 2021, the study assesses BMA's effectiveness compared to traditional models, particularly in capturing non-linear relationships and time-varying volatility. Findings reveal that capital expenditure and the money supply are the most significant determinants of exchange rate fluctuations: capital expenditure negatively affects the exchange rate, while increased money supply leads to currency appreciation. These results highlight the potential of BMA to refine economic forecasts and improve decision-making in Nigeria's financial and policy sectors.
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References
G. Ajao, The determinants of Real exchange rate volatility in Nigeria, African Journals Online (2011), 1–20. https://www.ajol.info/ejc/article
O. Adebayo, Statistical relationship between exchange rates and macroeconomic indicators in Nigeria, Journal of Economics and Finance, 7(4) (2015), 23–32. https://www.researchgate.net/publication/33408058
G. Box and G. Jenkins, Time series analysis: Forecasting and control, Holden-Day, 1970. https://www.scrip.org/references
G. Box and G. Tiao, Bayesian inference in statistical analysis, Addison-Wesley, 1973. https://onlinelibrary.wiley.com
M. Clyde, Model uncertainty and health effect studies for particulate matter, Environmetrics, 11(6) (2000), 745–763. https://onlinelibrary.wiley.com/doi/abs/10.1002/1099-095X%28200011/
P. Daewii, E. Etuk and Z. Deebom, Application of Bayesian Vector Autoregressive in Modeling Nigerian Narrow Money and Quasi-Money, International Journal of Applied Science and Mathematical Theory, 9(3) (2023), 2695–1908. https://www.iiardjournals.org
T. Eicher, C. Papageorgiou, and A. Raftery, Default priors and predictive performance in Bayesian model averaging with application to growth determinants, Journal of Applied Econometrics, 26 (2011), 30–55. https://sites.stat.washington.edu/raftery/Research/PDF/Eicher2010.pdf
M. Feldkircher, Forecast Combination and Bayesian Model Averaging: A Prior Sensitivity Analysis, Journal of Forecasting, 31(4) (2012), 361–376. https://onlinelibrary.wiley.com/doi/abs/10.1002
M. Hinne, Q. Grona, D. Bergh and E. Wagenmakers, A Conceptual Introduction to Bayesian Model Averaging, Advances in Methods and Practices in Psychological Science, 3(2) (2020), 1–16. https://journals.sagepub.com/doi/full/10.1177/2515245919898657
J. Hoeting, D. Madigan, A. Raftery, and C. Volinsky, Bayesian model averaging: A tutorial, Statistical Science, 14 (1999), 382–417. https://www.jstor.org/stable/2676803
D. Johnson and R. Brown, Comparing the forecasting accuracy of Bayesian methods with traditional time series models in predicting exchange rates in emerging markets, International Journal of Forecasting, 34(2) (2018), 324–339. https://www.researchgate.net/publication/22323262
B. Kalman, A new approach to linear filtering and prediction problems, Journal of Basic Engineering, 82(1) (1960), 35–45. https://www.unitedthc.com/dsp/kalman1960
B. Karamullah, N. Mehrbakhsh, I. Othman, I. Nashim and E. Leila, Comparative study of ANN and ARIMA models in predicting exchange rate, Research Journal of Applied Sciences, Engineering and Technology, 4(21) (2012), 4397–4403. https://maxwellsci.com/rjanet
J. Lee, P. Thall, B. Lim, P. Msaouel, Utility-based Bayesian personalized treatment selection for advanced breast cancer, Journal of the Royal Statistical Society: Series C (Applied Statistics), 71(5) (2022), 1605–1622. https://doi.org/10.1111/rssc.12582
J. Montgomery and B. Nyhan, Bayesian Model Averaging: Theoretical developments and practical applications, Oxford Journal: Political Analysis, 18(2) (2010), 245–270. https://www.jstor.org/stable/25792007
O. Ojo and O. Owonipa, Monetary policy dynamics in Nigeria: Empirical evidences from Bayesian Vector Autoregression with stochastic volatility, FUDMA Journal of Sciences, 8(2) (2024), 404–410. https://fjs.fudutsinma.edu.ng/index.php/fjs/article/view/2309
M. West and J. Harrison, Bayesian forecasting and dynamic models (2nd ed.), Springer, 1997. https://link.springer.com/book
J. Zhang and A. Taflanidis, Bayesian model averaging for Kriging regression structure selection, Probabilistic Engineering Mechanics, 56 (2019), 58–70. https://doi.org/10.1016/j.probengmech.2019.02.002