Power and Size analysis of Co-integration tests in Conditional Heteroskedascity: A Monte Carlo Simulation

This paper investigates the finite sample performance of power and size properties of several major co-integration tests using simulation analysis. These tests include; the co-integration Regression Durbin-Watson test (CRDW), Eagle-Granger test, Dicky Fuller unit root test with () statistics, Johans...

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Main Authors: Osabuohien-Irabor Osarumwense, Julian I. Mbegbu
Format: Article
Language:English
Published: Romanian National Institute of Statistics 2017-09-01
Series:Revista Română de Statistică
Subjects:
Online Access:http://www.revistadestatistica.ro/wp-content/uploads/2017/09/RRS-3_2017_A2.pdf
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spelling doaj-a69f2559009643a0abb3ed7ba5dc1ae12020-11-24T22:43:29ZengRomanian National Institute of StatisticsRevista Română de Statistică1018-046X1844-76942017-09-016531734Power and Size analysis of Co-integration tests in Conditional Heteroskedascity: A Monte Carlo SimulationOsabuohien-Irabor Osarumwense0Julian I. Mbegbu1Ambrose Alli University (A.A.U), Ekpoma, Edo, NigeriaUniversity of Benin, Benin City, NigeriaThis paper investigates the finite sample performance of power and size properties of several major co-integration tests using simulation analysis. These tests include; the co-integration Regression Durbin-Watson test (CRDW), Eagle-Granger test, Dicky Fuller unit root test with () statistics, Johansen likelihood ratio tests, and Phillips-Ouliaris test. Comparisons of tests are evaluated based on the proportion of rejects of the hypothesis of a no co-integration. This study answers the question of which co-integration test is better, particularly between the Eagle-Granger two-step test and the Johansen’s tests for co-integration, when the sets of parameters in models are persistence and spiky. The bivariate Generalized Autoregressive Conditional Heteroskedasticity (GARCH(1,1)) model with Gaussian innovations, is used in the data generating process (DGP). Our simulation results reveal that there is size distortion in the different co-integration test considered. The Eagle-Granger two-step test shows good robustness with respect to heteroskedasticity for the different sample sizes applied. However, the Johansen’s test for co-integration still proves to be powerful in capturing co-integration relationship, particularly for large sample when the co-integration innovations are Gaussian.http://www.revistadestatistica.ro/wp-content/uploads/2017/09/RRS-3_2017_A2.pdfCo-integration testSizeMonte-Carlos SimulationPowerHeteroskedasticity
collection DOAJ
language English
format Article
sources DOAJ
author Osabuohien-Irabor Osarumwense
Julian I. Mbegbu
spellingShingle Osabuohien-Irabor Osarumwense
Julian I. Mbegbu
Power and Size analysis of Co-integration tests in Conditional Heteroskedascity: A Monte Carlo Simulation
Revista Română de Statistică
Co-integration test
Size
Monte-Carlos Simulation
Power
Heteroskedasticity
author_facet Osabuohien-Irabor Osarumwense
Julian I. Mbegbu
author_sort Osabuohien-Irabor Osarumwense
title Power and Size analysis of Co-integration tests in Conditional Heteroskedascity: A Monte Carlo Simulation
title_short Power and Size analysis of Co-integration tests in Conditional Heteroskedascity: A Monte Carlo Simulation
title_full Power and Size analysis of Co-integration tests in Conditional Heteroskedascity: A Monte Carlo Simulation
title_fullStr Power and Size analysis of Co-integration tests in Conditional Heteroskedascity: A Monte Carlo Simulation
title_full_unstemmed Power and Size analysis of Co-integration tests in Conditional Heteroskedascity: A Monte Carlo Simulation
title_sort power and size analysis of co-integration tests in conditional heteroskedascity: a monte carlo simulation
publisher Romanian National Institute of Statistics
series Revista Română de Statistică
issn 1018-046X
1844-7694
publishDate 2017-09-01
description This paper investigates the finite sample performance of power and size properties of several major co-integration tests using simulation analysis. These tests include; the co-integration Regression Durbin-Watson test (CRDW), Eagle-Granger test, Dicky Fuller unit root test with () statistics, Johansen likelihood ratio tests, and Phillips-Ouliaris test. Comparisons of tests are evaluated based on the proportion of rejects of the hypothesis of a no co-integration. This study answers the question of which co-integration test is better, particularly between the Eagle-Granger two-step test and the Johansen’s tests for co-integration, when the sets of parameters in models are persistence and spiky. The bivariate Generalized Autoregressive Conditional Heteroskedasticity (GARCH(1,1)) model with Gaussian innovations, is used in the data generating process (DGP). Our simulation results reveal that there is size distortion in the different co-integration test considered. The Eagle-Granger two-step test shows good robustness with respect to heteroskedasticity for the different sample sizes applied. However, the Johansen’s test for co-integration still proves to be powerful in capturing co-integration relationship, particularly for large sample when the co-integration innovations are Gaussian.
topic Co-integration test
Size
Monte-Carlos Simulation
Power
Heteroskedasticity
url http://www.revistadestatistica.ro/wp-content/uploads/2017/09/RRS-3_2017_A2.pdf
work_keys_str_mv AT osabuohieniraborosarumwense powerandsizeanalysisofcointegrationtestsinconditionalheteroskedascityamontecarlosimulation
AT julianimbegbu powerandsizeanalysisofcointegrationtestsinconditionalheteroskedascityamontecarlosimulation
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