Periodic long-memory GARCH models

Citation
Bordignon, Silvano et al., Periodic long-memory GARCH models, Econometric reviews , 28(1-3), 2008, pp. 60-82
Journal title
ISSN journal
07474938
Volume
28
Issue
1-3
Year of publication
2008
Pages
60 - 82
Database
ACNP
SICI code
Abstract
A distinguishing feature of the intraday time-varying volatility of financial time series is given by the presence of long-range dependence of periodic type, due mainly to time-of-the-day phenomena. In this work, we introduce a model able to describe the empirical evidence given by this periodic long-memory behaviour. The model, named PLM-GARCH (Periodic Long-Memory GARCH), represents a natural extension of the FIGARCH model proposed for modelling long-range persistence of volatility. Periodic long memory versions of EGARCH (PLM-EGARCH) and of Log-GARCH (PLM-LGARCH) models are also examined. Some properties and characteristics of the models are given and finite sample performance of quasi-maximum likelihood estimation are studied with Monte Carlo simulations. Further possible extensions of the model to take into account multiple sources of periodic long-memory behaviour are proposed. Two empirical applications on intra-day financial time series are also provided.