Consistency of the Model Order Change-Point Estimator for GARCH Models
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Date
2018Author
Irungu, Irene W.
Mwita, Peter N.
Waititu, Antony G.
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GARCH models have been commonly used to capture volatility dynamics in
financial time series. A key assumption utilized is that the series is stationary
as this allows for model identifiability. This however violates the volatility
clustering property exhibited by financial returns series. Existing methods
attribute this phenomenon to parameter change. However, the assumption of
fixed model order is too restrictive for long time series. This paper proposes a
change-point estimator based on Manhattan distance. The estimator is applicable
to GARCH model order change-point detection. Procedures are based
on the sample autocorrelation function of squared series. The asymptotic consistency
of the estimator is proven theoretically.