Are multifractal processes suited to forecasting electricity price volatility? Evidence from Australian intraday data
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Date
Authors
Segnon, Mawuli K.
Lau, Chi Keung
Wilfling, Bernd
Gupta, Rangan
Journal Title
Journal ISSN
Volume Title
Publisher
De Gruyter
Abstract
We analyze Australian electricity price returns and find that they exhibit volatility clustering, long
memory, structural breaks, and multifractality. Consequently, we let the return mean equation follow two
alternative specifications, namely (i) a smooth transition autoregressive fractionally integrated moving
average (STARFIMA) process, and (ii) a Markov-switching autoregressive fractionally integrated moving
average (MSARFIMA) process. We specify volatility dynamics via a set of (i) short- and long-memory
GARCH-type processes, (ii) Markov-switching (MS) GARCH-type processes, and (iii) a Markov-switching
multifractal (MSM) process. Based on equal and superior predictive ability tests (using MSE and MAE loss
functions), we compare the out-of-sample relative forecasting performance of the models. We find that the
(multifractal) MSM volatility model keeps up with the conventional GARCH- and MSGARCH-type specifications.
In particular, the MSM model outperforms the alternative specifications, when using the daily squared
return as a proxy for latent volatility.
Description
Keywords
Electricity price volatility, GARCH-type processes, Markov-switching processes, Multifractal modeling, Volatility forecasting
Sustainable Development Goals
Citation
Segnon, Mawuli, Lau, Chi Keung, Wilfling, Bernd and Gupta, Rangan. "Are multifractal processes suited to forecasting electricity price volatility? Evidence from Australian intraday data" Studies in Nonlinear Dynamics & Econometrics, vol. 26, no. 1, 2022, pp. 73-98. https://doi.org/10.1515/snde-2019-0009.