On the power and size properties of cointegration tests in the light of high-frequency stylized facts
This paper establishes a selection of stylized facts for high-frequency cointegrated processes, based on one-minute-binned transaction data. A methodology is introduced to simulate cointegrated stock pairs, following none, some or all of these stylized facts. AR(1)-GARCH(1,1) and MR(3)-STAR(1)-GARCH(1,1) processes contaminated with reversible and non-reversible jumps are used to model the cointegration relationship. In a Monte Carlo simulation, the power and size properties of ten cointegration tests are assessed. We find that in high-frequency settings typical for stock price data, power is still acceptable, with the exception of strong or very frequent non-reversible jumps. Phillips-Perron and PGFF tests perform best.
Year of publication: |
2017
|
---|---|
Authors: | Krauss, Christopher ; Herrmann, Klaus |
Published in: |
Journal of Risk and Financial Management. - Basel : MDPI, ISSN 1911-8074. - Vol. 10.2017, 1, p. 1-24
|
Publisher: |
Basel : MDPI |
Subject: | cointegration testing | high-frequency | stylized facts | conditional heteroskedasticity | smooth transition autoregressive models |
Saved in: