Specification Procedure For Symmetric Smooth Transition Autoregressive Models

Authors

  • Benjamin Effiong

    Akwa Ibom State Polytechnic, Ikot Osurua. Akwa Ibom State, Nigeria
    Author
  • Emmanuel Akpan

    Federal College of Medical Laboratory Science and Technology, Jos, Plateau State, Nigeria
    Author

DOI:

https://doi.org/10.4314/5mg99d17

Keywords:

ARCH, effect, Symmetric, Transition function, Asymmetric, Sequential tests, Nonstationary

Abstract

Abstract: In this paper, we assess the first-rate specification accuracy of Escribano-Jorda procedure (EJP) over Terasvirta procedure (TP) in the selection of true symmetric STAR model of the financial time series. Daily nonstationary BETAGLASS stock index (BSI) totaling 2472 observations were obtained from Nigerian Exchange Limited for empirical illustrations. Terasvirta sequential tests and Escribano-Jorda tests were carried out; first-order logistic function classified as asymmetric transition function and exponential function classified as symmetric transition function were specified by TP and EJP, respectively.  Both symmetric and asymmetric STAR models were justifiably fitted to percentage BETAGLASS stock returns (PBSR) and the best model was determined at the evaluation stage. The empirical assessment of the fits of both symmetric STAR models and asymmetric STAR models revealed that symmetric STAR models outperformed asymmetric STAR models under consideration. Hence, EJP has greater specification power over TP particularly when the true model of the financial time series is any symmetric STAR model. Owing to the presence of autoregressive conditional heteroscedastic (ARCH) effects, STAR-generalized ARCH (STAR-GARCH) models and autoregressive-GARCH (AR-GARCH) models were specified and fitted to PBSR. On balance, the SPLSTAR-GARCH (1, 1) model with generalized hyperbolic skew-student’s t innovations outperformed the competing models. Also, the overall prediction performance of the SPLSTAR-GARCH (1 1) model is better than its linear counterpart based on the Akaike information criterion and forecast root mean square error.

Author Biographies

  • Benjamin Effiong, Akwa Ibom State Polytechnic, Ikot Osurua. Akwa Ibom State, Nigeria

    Department of Statistics, 

  • Emmanuel Akpan, Federal College of Medical Laboratory Science and Technology, Jos, Plateau State, Nigeria

    Department of Basic Sciences,

Downloads

Published

2025-02-05

Similar Articles

11-20 of 52

You may also start an advanced similarity search for this article.