Modelling trade durations using dynamic logarithmic component acd model with extended generalised inverse gaussian distribution

This paper proposes a logarithmic version of the two-component ACD (LogCACD) model with no restrictions on the sign of the model parameters while allowing the expected durations to be decomposed into the long- and short-run components to capture the dynamics of these durations. The extended generali...

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Main Authors: Tan, Yiing Fei, Ng, Kok Haur, Koh, You Beng, Peiris, Shelton
Format: Article
Published: MDPI 2022
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Online Access:http://eprints.um.edu.my/42245/
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spelling my.um.eprints.422452023-10-10T04:08:29Z http://eprints.um.edu.my/42245/ Modelling trade durations using dynamic logarithmic component acd model with extended generalised inverse gaussian distribution Tan, Yiing Fei Ng, Kok Haur Koh, You Beng Peiris, Shelton H Social Sciences (General) QA Mathematics This paper proposes a logarithmic version of the two-component ACD (LogCACD) model with no restrictions on the sign of the model parameters while allowing the expected durations to be decomposed into the long- and short-run components to capture the dynamics of these durations. The extended generalised inverse Gaussian (EGIG) distribution is used for the error distribution as its hazard function consists of a roller-coaster shape for certain parameters' values. An empirical application from the trade durations of International Business Machines stock index has been carried out to investigate this proposed model. Extensive comparisons are carried out to evaluate the modelling and forecasting performances of the proposed model with several benchmark models and different specifications of error distributions. The result reveals that the LogCACD(EGIG)(1,1) model gives the best in-sample fit based on the Akaike information criterion and other criteria. Furthermore, the estimated parameters obtained through the maximum likelihood estimation confirm the existence of the roller-coaster-shaped hazard function. The examination of LogCACD(EGIG)(1,1) model also provides the best out-of-sample forecasts evaluated based on the mean square forecast error using the Hansen's model confidence set. Lastly, different levels of time-at-risk forecasts are provided and tested with Kupiec likelihood ratio test. MDPI 2022-05 Article PeerReviewed Tan, Yiing Fei and Ng, Kok Haur and Koh, You Beng and Peiris, Shelton (2022) Modelling trade durations using dynamic logarithmic component acd model with extended generalised inverse gaussian distribution. Mathematics, 10 (10). ISSN 2227-7390, DOI https://doi.org/10.3390/math10101621 <https://doi.org/10.3390/math10101621>. 10.3390/math10101621
institution Universiti Malaya
building UM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Malaya
content_source UM Research Repository
url_provider http://eprints.um.edu.my/
topic H Social Sciences (General)
QA Mathematics
spellingShingle H Social Sciences (General)
QA Mathematics
Tan, Yiing Fei
Ng, Kok Haur
Koh, You Beng
Peiris, Shelton
Modelling trade durations using dynamic logarithmic component acd model with extended generalised inverse gaussian distribution
description This paper proposes a logarithmic version of the two-component ACD (LogCACD) model with no restrictions on the sign of the model parameters while allowing the expected durations to be decomposed into the long- and short-run components to capture the dynamics of these durations. The extended generalised inverse Gaussian (EGIG) distribution is used for the error distribution as its hazard function consists of a roller-coaster shape for certain parameters' values. An empirical application from the trade durations of International Business Machines stock index has been carried out to investigate this proposed model. Extensive comparisons are carried out to evaluate the modelling and forecasting performances of the proposed model with several benchmark models and different specifications of error distributions. The result reveals that the LogCACD(EGIG)(1,1) model gives the best in-sample fit based on the Akaike information criterion and other criteria. Furthermore, the estimated parameters obtained through the maximum likelihood estimation confirm the existence of the roller-coaster-shaped hazard function. The examination of LogCACD(EGIG)(1,1) model also provides the best out-of-sample forecasts evaluated based on the mean square forecast error using the Hansen's model confidence set. Lastly, different levels of time-at-risk forecasts are provided and tested with Kupiec likelihood ratio test.
format Article
author Tan, Yiing Fei
Ng, Kok Haur
Koh, You Beng
Peiris, Shelton
author_facet Tan, Yiing Fei
Ng, Kok Haur
Koh, You Beng
Peiris, Shelton
author_sort Tan, Yiing Fei
title Modelling trade durations using dynamic logarithmic component acd model with extended generalised inverse gaussian distribution
title_short Modelling trade durations using dynamic logarithmic component acd model with extended generalised inverse gaussian distribution
title_full Modelling trade durations using dynamic logarithmic component acd model with extended generalised inverse gaussian distribution
title_fullStr Modelling trade durations using dynamic logarithmic component acd model with extended generalised inverse gaussian distribution
title_full_unstemmed Modelling trade durations using dynamic logarithmic component acd model with extended generalised inverse gaussian distribution
title_sort modelling trade durations using dynamic logarithmic component acd model with extended generalised inverse gaussian distribution
publisher MDPI
publishDate 2022
url http://eprints.um.edu.my/42245/
_version_ 1781704615325073408