Bayesian inference for inflation volatility modeling in Ghana
African Journal of Economic and Management Studies
ISSN: 2040-0705
Article publication date: 20 June 2024
Abstract
Purpose
The purpose of this paper is to emphasize the risks involved in modeling inflation volatility in the context of macroeconomic policy. For countries like Ghana that are always battling economic problems, accurate models are necessary in any modeling endeavor. We estimate volatility taking into account the heteroscedasticity of the model parameters.
Design/methodology/approach
The estimations considered the quasi-maximum likelihood-based GARCH, stochastic and Bayesian inference models in estimating the parameters of the inflation volatility.
Findings
A comparison of the stochastic volatility and Bayesian inference models reveals that the latter is better at tracking the evolution of month-on-month inflation volatility, thus following closely the data during the period under review.
Research limitations/implications
The paper looks at the effect of parameter uncertainty of inflation volatility alone while considering the effects of other key variables like interest and exchange rates that affect inflation.
Practical implications
Economists have battled with accurate modeling and tracking of inflation volatility in Ghana. Where the data is not well-behaved, for example, in developing economies, the stochastic nature of the parameter estimates should be incorporated in the model estimation.
Social implications
Estimating the parameters of inflation volatility models is not enough in a perpetually gyrating economy. The risks of these parameters are needed to completely describe the evolution of volatility especially in developing economies like Ghana.
Originality/value
This work is one of the first to draw the attention of policymakers in Ghana towards the nature of inflation data generated in the economy and the appropriate model for capturing the uncertainty of the model parameters.
Keywords
Acknowledgements
We want to thank Chad Fulton, a senior economist at the Federal Reserve Board of Governors, for using part of his Python code in the analysis.
Citation
Korkpoe, C.H., Ahiakpor, F. and Amarteifio, E.N.A. (2024), "Bayesian inference for inflation volatility modeling in Ghana", African Journal of Economic and Management Studies, Vol. ahead-of-print No. ahead-of-print. https://doi.org/10.1108/AJEMS-04-2023-0132
Publisher
:Emerald Publishing Limited
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