Publication

Forecasting using high-frequency data: a comparison of asymmetric financial duration models

Zhang, Q.
Cai, Charlie X.
Keasey, K.
Publication Date
2009
End of Embargo
Supervisor
Rights
Peer-Reviewed
Open Access status
closedAccess
Accepted for publication
Institution
Department
Awarded
Embargo end date
Additional title
Abstract
The first purpose of this paper is to assess the short-run forecasting capabilities of two competing financial duration models. The forecast performance of the Autoregressive Conditional Multinomial–Autoregressive Conditional Duration (ACM-ACD) model is better than the Asymmetric Autoregressive Conditional Duration (AACD) model. However, the ACM-ACD model is more complex in terms of the computational setting and is more sensitive to starting values. The second purpose is to examine the effects of market microstructure on the forecasting performance of the two models. The results indicate that the forecast performance of the models generally decreases as the liquidity of the stock increases, with the exception of the most liquid stocks. Furthermore, a simple filter of the raw data improves the performance of both models. Finally, the results suggest that both models capture the characteristics of the micro data very well with a minimum sample length of 20 days.
Version
No full-text in the repository
Citation
Zhang Q, Cai CX and Keasey K (2009) Forecasting using high-frequency data: a comparison of asymmetric financial duration models. Journal of Forecasting, 28(5): 371-386.
Link to publisher’s version
Link to published version
Link to Version of Record
Type
Article
Qualification name
Notes