Trend-cycle correlation, drift break and the estimation of trend and cycle in Canadian GDP
Arabinda Basistha ()
Canadian Journal of Economics, 2007, vol. 40, issue 2, 584-606
Abstract:
Univariate correlated trend cycle models are highly sensitive to the specifications of breaks in the data. This paper argues, using Monte Carlo experiments, that a bivariate correlated unobserved components (UC) framework with breaks delivers substantially more accurate results for the trend-cycle parameters than the corresponding univariate frameworks in a finite sample size. The paper estimates stochastic trend and cyclical fluctuations in Canada from a bivariate UC model. Results show a fairly volatile stochastic trend after the drift break and the negative trend-cycle shock correlation are accounted for. The estimated cyclical component is large, persistent, and consistent with ECRI denoted Canadian recessions.
JEL-codes: E31 E32 (search for similar items in EconPapers)
Date: 2007
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