dc.description.abstract |
This study aimed to propose the BSGARCH (1,1) model, a hybrid Basis Spline
GARCH-type model suitable for modelling the volatility of nancial time series.
The proposed model was compared with other classical GARCH-type models such
as GARCH, EGARCH, GJR-GARCH, and APARCH models, and it was found to
outperform them in terms of predictive accuracy, as measured by RMSE, MAPE,
TIC, and QLIKE. The results showed that the BSGARCH (1,1) model had a superior
predictive ability compared to the other models. The study also compared the
performance of the BSGARCH (1,1) model with the Spline-GARCH model of Engle
and Rangel, which used the exponential quadratic spline to model the non-stationary
part of volatility. In this comparison, the Spline- GARCH model slightly outperformed
the proposed BSGARCH (1,1) model. However, the di erence in performance was
negligible, and thus, the proposed BSGARCH (1,1) model can be considered a good
alternative to the Spline-GARCH model. The study demonstrates that the proposed
BSGARCH (1,1) model is a useful tool for modelling non-linear and non-stationary
nancial time series data, with superior predictive ability compared to other classical
GARCH-type models. |
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