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Financial applications of ARMA models with GARCH errors

M. Ghahramani (University of Manitoba, Winnipeg, Canada)
A. Thavaneswaran (University of Manitoba, Winnipeg, Canada)

Journal of Risk Finance

ISSN: 1526-5943

Article publication date: 1 October 2006

1509

Abstract

Purpose

Financial returns are often modeled as stationary time series with innovations having heteroscedastic conditional variances. This paper seeks to derive the kurtosis of stationary processes with GARCH errors. The problem of hypothesis testing for stationary ARMA(p, q) processes with GARCH errors is studied. Forecasting of ARMA(p, q) processes with GARCH errors is also discussed in some detail.

Design/methodology/approach

Estimating‐function methodology was the principal method used for the research. The results were also illustrated using examples and simulation studies. Volatility modeling is the subject of the paper.

Findings

The kurtosis of stationary processes with GARCH errors is derived in terms of the model parameters (ψ), Ψ‐weights, and the kurtosis of the innovation process. Hypothesis testing for stationary ARMA(p, q) processes with GARCH errors based on the estimating‐function approach is shown to be superior to the least‐squares approach. The fourth moment of the l‐steps‐ahead forecast error is related to the model parameters and the kurtosis of the innovation process.

Originality/value

This paper will be of value to econometricians and to anyone with an interest in the statistical properties of volatility modeling.

Keywords

Citation

Ghahramani, M. and Thavaneswaran, A. (2006), "Financial applications of ARMA models with GARCH errors", Journal of Risk Finance, Vol. 7 No. 5, pp. 525-543. https://doi.org/10.1108/15265940610712678

Publisher

:

Emerald Group Publishing Limited

Copyright © 2006, Emerald Group Publishing Limited

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