Abstract

This study traced the patterns of discrete time series over time with respect to GARCH effect and asymmetric GARCH effect. Particularly, we paid attention to the weakness of the GARCH model in modeling the asymmetry of GARCH effect. In order to handle this weakness, we applied the sign and size bias test which comprises sign bias test, negative size bias test, positive size bias test, and Lagrange Multiplier test in order to identify the asymmetric effect in the residual series of the GARCH model. Where the asymmetric effect is present and significant, we fit the asymmetric GARCH models. Exploring the share price returns of Zenith bank plc obtained from the Nigerian Stock Exchange from January 4, 2006 to May 26, 2015, our findings indicated the presence of GARCH effect and was adequately captured by GARCH(0,1) model. Also, the sign and size bias test for asymmetric GARCH effect on the residual series of GARCH(0,1) model showed a joint significance as indicated by the Lagrange Multiplier test. Moreover, the asymmetric GARCH effect was adequately captured by EGARCH(0,1) and TGARCH(0,1) models. In addition, the significance of the size bias test indicated that the size of negative and positive returns has an impact on the predicted heteroscedasticity. Hence, we concluded that GARCH(0,1) model adequately predicted the GARCH effect but failed to capture the asymmetric effect in the share price returns of the discrete series. However, this was complemented by both EGARCH(0,1) and TGARCH(0,1) models with the size of both the negative and positive effects taken into consideration.

Highlights

  • Returns are the natural logarithm transformed share prices whose characterizations have more attractive statistical properties, and easier to handle than the share prices

  • Exploring the share price returns of Zenith bank plc obtained from the Nigerian Stock Exchange from January 4, 2006 to May 26, 2015, our findings indicated the presence of Generalized Autoregressive Conditional Heteroscedasticity (GARCH) effect and was adequately captured by GARCH(0,1) model

  • Following the inability of the symmetric GARCH in capturing and modeling the leverage effect of a discrete-time series, this study has been able to take into consideration asymmetric effect in modeling such a series

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Summary

Introduction

Returns are the natural logarithm transformed share prices whose characterizations have more attractive statistical properties, and easier to handle than the share prices. The formal tests for the presence of heteroscedasticity (ARCH/GARCH effects) areusually Lagrange Multiplier and Ljung-Box on the squares of the residual series obtained from ARIMA modeling of the return series. Once these ARCH/GARCH effects are identified, GARCH models could be applied (Akpan, Moffat and Ekpo, 2016;Akpan and Moffat, 2015;Ogum, Beer and Nouyrigat, 2005; Mgbame and Ikhatua, 2014; Atoi, 2014; Onwukwe, Samson and Lipcsey, 2014;Yaya, 2013; Emenike, 2010). We seek to fill this gap by using sign and size bias test

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