Misspecification of Variants of Autoregressive GARCH Models and Effect on In-Sample Forecasting
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Nov 1, 2016
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Olusanya E. Olubusoye
Department Of Statistics, University Of Ibadan, Ibadan, Nigeria
Olaoluwa S. Yaya
Department Of Statistics, University Of Ibadan, Ibadan, Nigeria
Oluwadare O. Ojo
Department Of Statistics, Federal University Of Technology Akure, Akure, Nigeria
Abstract
Generally, in empirical financial studies, the determination of the true conditional variance in GARCH modelling is largely subjective. In this paper, we investigate the consequences of choosing a wrong conditional variance specification. The methodology involves specifying a true conditional variance and then simulating data to conform to the true specification. The estimation is then carried out using the true specification and other plausible specification that are appealing to the researcher, using model and forecast evaluation criteria for assessing performance. The results show that GARCH model could serve as better alternative to other asymmetric volatility models.
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