首页 | 本学科首页   官方微博 | 高级检索  
     


Lag Length Selection for Unit Root Tests in the Presence of Nonstationary Volatility
Authors:Giuseppe Cavaliere  Peter C. B. Phillips  Stephan Smeekes
Affiliation:1. Department of Statistical Sciences , University of Bologna , Bologna , Italy;2. Cowles Foundation for Research in Economics , Yale University , New Haven , Connecticut , USADepartment of Economics, University of Auckland, New Zealand;3. Department of Economics, University of Southampton, U.K.;4. and Singapore Management University, Singapore;5. Department of Quantitative Economics , Maastricht University , Maastricht , The Netherlands
Abstract:A number of recent papers have focused on the problem of testing for a unit root in the case where the driving shocks may be unconditionally heteroskedastic. These papers have, however, taken the lag length in the unit root test regression to be a deterministic function of the sample size, rather than data-determined, the latter being standard empirical practice. We investigate the finite sample impact of unconditional heteroskedasticity on conventional data-dependent lag selection methods in augmented Dickey–Fuller type regressions and propose new lag selection criteria which allow for unconditional heteroskedasticity. Standard lag selection methods are shown to have a tendency to over-fit the lag order under heteroskedasticity, resulting in significant power losses in the (wild bootstrap implementation of the) augmented Dickey–Fuller tests under the alternative. The proposed new lag selection criteria are shown to avoid this problem yet deliver unit root tests with almost identical finite sample properties as the corresponding tests based on conventional lag selection when the shocks are homoskedastic.
Keywords:Information criteria  Lag selection  Nonstationary volatility  Unit root test  Wild bootstrap
设为首页 | 免责声明 | 关于勤云 | 加入收藏

Copyright©北京勤云科技发展有限公司  京ICP备09084417号