Published February 1, 2023 | Version v1
Journal article Open

Testing for parameter change epochs in GARCH time series

  • 1. Heidelberg University
  • 2. University of York
  • 3. University of Chicago

Description

We develop a uniform test for detecting and dating the integrated or mildly explosive behaviour of a strictly stationary generalized autoregressive conditional heteroskedasticity (GARCH) process. Namely, we test the null hypothesis of a globally stable GARCH process with constant parameters against the alternative that there is an 'abnormal' period with changed parameter values. During this period, the parameter-value change may lead to an integrated or mildly explosive behaviour of the volatility process. It is assumed that both the magnitude and the timing of the breaks are unknown. We develop a double-supreme test for the existence of breaks, and then provide an algorithm to identify the periods of changes. Our theoretical results hold under mild moment assumptions on the innovations of the GARCH process. Technically, the existing properties for the quasi-maximum likelihood estimation in the GARCH model need to be reinvestigated to hold uniformly over all possible periods of change. The key results involve a uniform weak Bahadur representation for the estimated parameters, which leads to weak convergence of the test statistic to the supreme of a Gaussian process. Simulations in the Appendix show that the test has good size and power for reasonably long time series. We apply the test to the conventional early-warning indicators of both the financial market and a representative of the emerging Fintech market, i.e., the Bitcoin returns.

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Additional details

Identifiers

DOI
10.1093/ectj/utad006
Other
oai:uchicago.tind.io:5935

Funding

National Science Foundation
DMS-1916351
National Science Foundation
DMS-2027723
ESRC
ES/T01573X/1

UChicago Information

Division(s)
Physical Sciences Division, The College
Department(s)
Statistics, Physical Sciences