This study evaluates the empirical performance of four power transformation fami-lies: extended Tukey, Modulus, Exponential, and Yeo–Johnson, in modeling the return in the context of GARCH(1,1) models with two error distributions: Gaussian (normal) and Student-t. We employ an Adaptive Random Walk Metropolis method in Markov Chain Monte Carlo scheme to draw parameters. Using 19 international stock indices from the Oxford-Man Institute and basing on the log likelihood, Akaike Information Cri-terion, Bayesian Information Criterion, and Deviance Information Criterion, the use of power transformation families to the return series clearly improves the fit of the normal GARCH(1,1) model. In particular, the Modulus transformation family provides the best fit. Under Student’s t-error distribution assumption, the GARCH(1,1) models under power transformed returns perform better in few cases.
CITATION STYLE
Nugroho, D. B., Mahatma, T., & Pratomo, Y. (2021). Garch models under power transformed returns: Empirical evidence from international stock indices. Austrian Journal of Statistics, 50(4), 1–18. https://doi.org/10.17713/ajs.v50i4.1075
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