Exploring Macroeconomic Dynamics on Stock Returns in African Countries: Garch-Midas and Regularization Regression Approach
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University of Ghana
Abstract
Measuring stock market volatility and its determinants is critical for stock market
participants as volatility spillover effects alters corporate performance. This thesis
adopted two different approaches where the analysis was distinctly implemented using
GARCH-MIDAS and regularization regression methods. The classic GARCH as a
benchmark and the univariate GARCH-MIDAS framework are the first two GARCH
family models whose forecasting outcomes are examined in this thesis. The second
analysis was a shrinkage approach that adopted two techniques: LASSO and ridge
regularization approaches, which were used to determine the most influential regressors
for stock index returns and volatility in the three markets. The outcome of GARCH
MIDASanalyses suggests that inflation, interest rate, currency exchange rate, and price
of oil are significant determinants of the volatility of the Johannesburg Stock Market
All Share Index. While for Nigeria the volatility reacts significantly to exchange rate
and price of oil. Furthermore, Ghanaian equity volatility is significantly influenced by
inflation, the exchange rate, the interest rate, and the price of oil, especially for the long
term volatility component. The significant shock of the oil price and exchange rate to
volatility are present in all three markets using the GARCH-MIDAS framework. As
an alternative, the machine learning algorithms selected the money supply, oil price,
interest rate, and exchange rate as the most critical indicators for predicting South
African stock returns. In the Nigeria scenario, the regularization algorithm produced
conclusion where oil price and money supply were specified as the utmost relevant
variables in predicting asset returns. Additionally, currency exchange rate, interest rate,
and price of crude oil were the ultimate significant indicators that determined stock
returns in Ghana.
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MPhil. Actuarial Science