Abstract :
We investigate the instability problem of the covariance structure of time series by combining the nonparametric
approach based on the evolutionary spectral density theory of Priestley [Evolutionary spectra
and non-stationary processes, J. R. Statist. Soc., 27 (1965), pp. 204–237; Wavelets and time-dependent
spectral analysis, J. Time Ser. Anal., 17 (1996), pp. 85–103] and the parametric approach based on linear
regression models of Bai and Perron [Estimating and testing linear models with multiple structural changes,
Econometrica 66 (1998), pp. 47–78]. A Monte Carlo study is presented to evaluate the performance of
some parametric testing and estimation procedures for models characterized by breaks in variance. We
attempt to see whether these procedures perform in the sameway as models characterized by mean-shifts as
investigated by Bai and Perron [Multiple structural change models: a simulation analysis, in: Econometric
Theory and Practice: Frontiers of Analysis and Applied Research, D. Corbea, S. Durlauf, and B.E. Hansen,
eds., Cambridge University Press, 2006, pp. 212–237].We also provide an analysis of financial data series,
of which the stability of the covariance function is doubtful
Keywords :
Break dates , coverage rates , evolutionary spectrum , Size and power , selection procedures