Characterization and Prediction of the Ghana Stock Exchange Composite Index Utilizing Bayesian Stochastic Volatility Models

This study delves into the dynamics of the Ghana Stock Exchange Composite Index (GSE-CI) over the period from 2011 to 2022, a symbolic emerging market index that presents unique challenges and opportunities for financial analysis. We characterize the GSE-CI using advanced analytical tools such as th...

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Main Authors: Osei K. Tweneboah, Kwesi A. Ohene-Obeng, Maria C. Mariani
Format: Article
Language:English
Published: MDPI AG 2024-12-01
Series:Risks
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Online Access:https://www.mdpi.com/2227-9091/13/1/3
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author Osei K. Tweneboah
Kwesi A. Ohene-Obeng
Maria C. Mariani
author_facet Osei K. Tweneboah
Kwesi A. Ohene-Obeng
Maria C. Mariani
author_sort Osei K. Tweneboah
collection DOAJ
description This study delves into the dynamics of the Ghana Stock Exchange Composite Index (GSE-CI) over the period from 2011 to 2022, a symbolic emerging market index that presents unique challenges and opportunities for financial analysis. We characterize the GSE-CI using advanced analytical tools such as the Hurst exponent and <i>R</i>/<i>S</i> analysis to uncover its fractal properties and complex dynamics. The paper then advances to predictive modeling, employing an innovative approach with four variations of Stochastic Volatility (SV) models: SV with linear regressors, SV with Student’s <i>t</i> errors, SV with leverage effects, and a hybrid model combining Student’s <i>t</i> errors with leverage. Each model offers a unique perspective on forecasting the behavior of the GSE-CI, with the SV model incorporating Student’s <i>t</i> errors emerging as the most effective, as evidenced by the lowest Root Mean Square Error (RMSE) in our comparative evaluation. The integration of these models highlights their robustness in capturing the intricate volatility patterns of the GSE-CI, making a compelling case for their applicability to similar financial markets in other emerging economies. This research also paves the way for future investigations into other market indices and assets within and beyond the borders of emerging markets.
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spelling doaj-art-4bc81bf900d24f669ca81e1e0ac96e332025-01-24T13:48:18ZengMDPI AGRisks2227-90912024-12-01131310.3390/risks13010003Characterization and Prediction of the Ghana Stock Exchange Composite Index Utilizing Bayesian Stochastic Volatility ModelsOsei K. Tweneboah0Kwesi A. Ohene-Obeng1Maria C. Mariani2Ramapo Data Science Program, Ramapo College of New Jersey, Mahwah, NJ 07430, USADepartment of Mathematical Sciences, The University of Texas at El Paso, El Paso, TX 79968, USADepartment of Mathematical Sciences, The University of Texas at El Paso, El Paso, TX 79968, USAThis study delves into the dynamics of the Ghana Stock Exchange Composite Index (GSE-CI) over the period from 2011 to 2022, a symbolic emerging market index that presents unique challenges and opportunities for financial analysis. We characterize the GSE-CI using advanced analytical tools such as the Hurst exponent and <i>R</i>/<i>S</i> analysis to uncover its fractal properties and complex dynamics. The paper then advances to predictive modeling, employing an innovative approach with four variations of Stochastic Volatility (SV) models: SV with linear regressors, SV with Student’s <i>t</i> errors, SV with leverage effects, and a hybrid model combining Student’s <i>t</i> errors with leverage. Each model offers a unique perspective on forecasting the behavior of the GSE-CI, with the SV model incorporating Student’s <i>t</i> errors emerging as the most effective, as evidenced by the lowest Root Mean Square Error (RMSE) in our comparative evaluation. The integration of these models highlights their robustness in capturing the intricate volatility patterns of the GSE-CI, making a compelling case for their applicability to similar financial markets in other emerging economies. This research also paves the way for future investigations into other market indices and assets within and beyond the borders of emerging markets.https://www.mdpi.com/2227-9091/13/1/3Stochastic Volatility modelsfinancial time seriesGhana Stock Exchange Composite IndexHurst exponent<i>R</i>/<i>S</i> analysis
spellingShingle Osei K. Tweneboah
Kwesi A. Ohene-Obeng
Maria C. Mariani
Characterization and Prediction of the Ghana Stock Exchange Composite Index Utilizing Bayesian Stochastic Volatility Models
Risks
Stochastic Volatility models
financial time series
Ghana Stock Exchange Composite Index
Hurst exponent
<i>R</i>/<i>S</i> analysis
title Characterization and Prediction of the Ghana Stock Exchange Composite Index Utilizing Bayesian Stochastic Volatility Models
title_full Characterization and Prediction of the Ghana Stock Exchange Composite Index Utilizing Bayesian Stochastic Volatility Models
title_fullStr Characterization and Prediction of the Ghana Stock Exchange Composite Index Utilizing Bayesian Stochastic Volatility Models
title_full_unstemmed Characterization and Prediction of the Ghana Stock Exchange Composite Index Utilizing Bayesian Stochastic Volatility Models
title_short Characterization and Prediction of the Ghana Stock Exchange Composite Index Utilizing Bayesian Stochastic Volatility Models
title_sort characterization and prediction of the ghana stock exchange composite index utilizing bayesian stochastic volatility models
topic Stochastic Volatility models
financial time series
Ghana Stock Exchange Composite Index
Hurst exponent
<i>R</i>/<i>S</i> analysis
url https://www.mdpi.com/2227-9091/13/1/3
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AT kwesiaoheneobeng characterizationandpredictionoftheghanastockexchangecompositeindexutilizingbayesianstochasticvolatilitymodels
AT mariacmariani characterizationandpredictionoftheghanastockexchangecompositeindexutilizingbayesianstochasticvolatilitymodels