Symmetric and asymmetric GARCH estimations of the impact of macroeconomic uncertainties on stock market dynamics in Tanzania

Abstract This study examines the impact of macroeconomic uncertainties on stock market dynamics in Tanzania, motivated by the need to understand volatility patterns in a frontier market characterized by limited liquidity and high sensitivity to economic shocks. We employ symmetric and asymmetric gen...

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Main Authors: Michael Peter, Silas Mirau, Emmanuel Sinkwembe, Christian Kasumo, Calisto Guambe
Format: Article
Language:English
Published: SpringerOpen 2025-08-01
Series:Future Business Journal
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Online Access:https://doi.org/10.1186/s43093-025-00632-5
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author Michael Peter
Silas Mirau
Emmanuel Sinkwembe
Christian Kasumo
Calisto Guambe
author_facet Michael Peter
Silas Mirau
Emmanuel Sinkwembe
Christian Kasumo
Calisto Guambe
author_sort Michael Peter
collection DOAJ
description Abstract This study examines the impact of macroeconomic uncertainties on stock market dynamics in Tanzania, motivated by the need to understand volatility patterns in a frontier market characterized by limited liquidity and high sensitivity to economic shocks. We employ symmetric and asymmetric generalized autoregressive conditional heteroskedasticity (GARCH) models, including the nonlinear asymmetric GARCH (NAGARCH) model, to capture complex volatility dynamics. The selection of macroeconomic variables is theoretically motivated: the inflation rate represents domestic monetary policy uncertainty; GDP captures economic performance and growth expectations; and gold prices serve as a proxy for global commodity conditions and safe-haven demand, which is particularly relevant given Tanzania’s mining sector. Using monthly data on the Tanzania share index, inflation rate, GDP, and gold prices from February 2007 to December 2023, we examine how macroeconomic variations influence stock market volatility. While symmetric GARCH models assume equal impacts from positive and negative shocks, asymmetric models including EGARCH, GJR-GARCH, and NAGARCH, capture differential responses. The NAGARCH model allows for nonlinearity in the relationship between past returns and volatility, offering a nuanced understanding of market reactions. Empirical findings suggest that the asymmetric NAGARCH model provides a more accurate representation of Tanzanian stock market behavior, capturing heightened sensitivity to negative shocks typical in emerging markets. The results reveal that inflation and gold prices have significant, long-term influences on stock market volatility. This study contributes to the emerging market finance literature and offers valuable insights for investors and policymakers in understanding risk patterns and designing appropriate strategies for frontier markets.
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spelling doaj-art-433d4c44c4404ab5b6cc86b02c2d01122025-08-20T03:05:20ZengSpringerOpenFuture Business Journal2314-72102025-08-0111111910.1186/s43093-025-00632-5Symmetric and asymmetric GARCH estimations of the impact of macroeconomic uncertainties on stock market dynamics in TanzaniaMichael Peter0Silas Mirau1Emmanuel Sinkwembe2Christian Kasumo3Calisto Guambe4Nelson Mandela African Institution of Science and TechnologyNelson Mandela African Institution of Science and TechnologyUniversity of Dar es SalaamMulungushi UniversityEduardo Mondlane UniversityAbstract This study examines the impact of macroeconomic uncertainties on stock market dynamics in Tanzania, motivated by the need to understand volatility patterns in a frontier market characterized by limited liquidity and high sensitivity to economic shocks. We employ symmetric and asymmetric generalized autoregressive conditional heteroskedasticity (GARCH) models, including the nonlinear asymmetric GARCH (NAGARCH) model, to capture complex volatility dynamics. The selection of macroeconomic variables is theoretically motivated: the inflation rate represents domestic monetary policy uncertainty; GDP captures economic performance and growth expectations; and gold prices serve as a proxy for global commodity conditions and safe-haven demand, which is particularly relevant given Tanzania’s mining sector. Using monthly data on the Tanzania share index, inflation rate, GDP, and gold prices from February 2007 to December 2023, we examine how macroeconomic variations influence stock market volatility. While symmetric GARCH models assume equal impacts from positive and negative shocks, asymmetric models including EGARCH, GJR-GARCH, and NAGARCH, capture differential responses. The NAGARCH model allows for nonlinearity in the relationship between past returns and volatility, offering a nuanced understanding of market reactions. Empirical findings suggest that the asymmetric NAGARCH model provides a more accurate representation of Tanzanian stock market behavior, capturing heightened sensitivity to negative shocks typical in emerging markets. The results reveal that inflation and gold prices have significant, long-term influences on stock market volatility. This study contributes to the emerging market finance literature and offers valuable insights for investors and policymakers in understanding risk patterns and designing appropriate strategies for frontier markets.https://doi.org/10.1186/s43093-025-00632-5GARCH modelsStock market volatilityMacroeconomic uncertaintiesAsymmetric models
spellingShingle Michael Peter
Silas Mirau
Emmanuel Sinkwembe
Christian Kasumo
Calisto Guambe
Symmetric and asymmetric GARCH estimations of the impact of macroeconomic uncertainties on stock market dynamics in Tanzania
Future Business Journal
GARCH models
Stock market volatility
Macroeconomic uncertainties
Asymmetric models
title Symmetric and asymmetric GARCH estimations of the impact of macroeconomic uncertainties on stock market dynamics in Tanzania
title_full Symmetric and asymmetric GARCH estimations of the impact of macroeconomic uncertainties on stock market dynamics in Tanzania
title_fullStr Symmetric and asymmetric GARCH estimations of the impact of macroeconomic uncertainties on stock market dynamics in Tanzania
title_full_unstemmed Symmetric and asymmetric GARCH estimations of the impact of macroeconomic uncertainties on stock market dynamics in Tanzania
title_short Symmetric and asymmetric GARCH estimations of the impact of macroeconomic uncertainties on stock market dynamics in Tanzania
title_sort symmetric and asymmetric garch estimations of the impact of macroeconomic uncertainties on stock market dynamics in tanzania
topic GARCH models
Stock market volatility
Macroeconomic uncertainties
Asymmetric models
url https://doi.org/10.1186/s43093-025-00632-5
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AT silasmirau symmetricandasymmetricgarchestimationsoftheimpactofmacroeconomicuncertaintiesonstockmarketdynamicsintanzania
AT emmanuelsinkwembe symmetricandasymmetricgarchestimationsoftheimpactofmacroeconomicuncertaintiesonstockmarketdynamicsintanzania
AT christiankasumo symmetricandasymmetricgarchestimationsoftheimpactofmacroeconomicuncertaintiesonstockmarketdynamicsintanzania
AT calistoguambe symmetricandasymmetricgarchestimationsoftheimpactofmacroeconomicuncertaintiesonstockmarketdynamicsintanzania