COGARCH models are continuous time versions of the well-known GARCHmodels of financial returns. The first aim of this paper is to show how the method of prediction-based estimating functions can be applied to draw statistical inference from observations of a COGARCH(1,1) model if the higher-order structure of the process is clarified. A second aim of thepaper is to provide recursive expressions for the joint moments of any fixed order of the process.Asymptotic results are given, and a simulation study shows that the method of prediction-basedestimating function outperforms the other available estimation methods.

Higher Moments and Prediction-Based Estimation for the COGARCH(1,1) Model

NEGRI, Ilia
2015-01-01

Abstract

COGARCH models are continuous time versions of the well-known GARCHmodels of financial returns. The first aim of this paper is to show how the method of prediction-based estimating functions can be applied to draw statistical inference from observations of a COGARCH(1,1) model if the higher-order structure of the process is clarified. A second aim of thepaper is to provide recursive expressions for the joint moments of any fixed order of the process.Asymptotic results are given, and a simulation study shows that the method of prediction-basedestimating function outperforms the other available estimation methods.
2015
COGARCH model
Higher moments
Parameter estimation
Prediction-based estimating functions
Stochastic volatility models
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/20.500.11770/359184
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