Stable distributions with applications to South African financial data.
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Date
2024
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Abstract
In recent times, researchers, analysts and statisticians have shown a keen interest
in studying Extreme Value Theory (EVT), particularly with the application to
mixture models in the medical and financial sectors. This study aims to validate the
use of stable distributions in modelling three Johannesburg Stock Exchange (JSE)
market indices, namely the All Share Index (ALSI), Banks Index and the Mining
Index, as well as the United States of American Dollar (USD) to South African
Rand (ZAR) exchange rate. This study leverages the unique properties of stable
distributions when modelling heavy-tailed data. Nolan’s S0-parameterization
stable distribution (SD) was fitted to the returns of the three FTSE/JSE indices and
USD/ZAR exchange rate and a hybrid Generalized Autoregressive Conditional
Heteroskedasticity (GARCH)-type model combined with stable distributions was
fitted to each return series. The two-tailed mixture model of the Generalized Pareto
Distribution (GPD), stable distribution, Generalized Pareto Distribution referred to
as GSG, as well as the Stable-Normal-Stable (SNS) and Stable-KDE-Stable (SKS) was
fitted to evaluate its relative performance in modelling financial data. Results show
that the S0-parameterization SD fits the South African financial returns well. The
hybrid GARCH (1,1)-SD model competes favourably with the GARCH-GPD model
in estimating Value-at-Risk (VaR) for FTSE/JSE Banks Index, FTSE/JSE Mining Index
and the USD/ZAR exchange rate returns. The hybrid EGARCH (1,1)-SD competes
well against the GARCH-GPD model for the FTSE/JSE ALSI returns. Inconclusive
results are observed for the short position of the fitted GKG models; however, in the
long position, an appropriate fit of the GPD-KDE-GPD (GKG) model, where KDE is
the kernel density estimator, is emphasised for all four return series. The proposed
mixture models, GSG, SNS and SKS models, are found to be a good alternative in
fitting South African financial data to the commonly used GPD-Normal-GPD (GNG)
mixture model. The results of this study are important to financial practitioners, risk
managers and researchers as the proposed mixture models add more value to the
literature on the applications of extreme mixture models.
Description
Doctoral Degree. University of KwaZulu-Natal, Durban.