Computational Statistics

, Volume 23, Issue 1, pp 79–98 | Cite as

Estimation of population spectrum for linear processes with random coefficients

  • P. Saavedra
  • C. N. Hernández
  • I. Luengo
  • J. Artiles
  • A. Santana
Original Paper

Abstract

A set of time series generated by stationary linear processes with an absolutely continuous spectral distribution is analysed. The time series can then be considered realizations of a linear process of random coefficients. Likewise, each spectral density function is a realization of a stochastic process whose function of means is called a population spectrum. We propose a kernel estimator for the population spectrum and give conditions for its consistency. We then illustrate the properties of this estimator in a simulation study and compare its performance with an alternative parametric estimator that can be found in the literature.

Keywords

Linear processes of random parameters Population spectrum Consistency 

JEL Classification

C22 

Preview

Unable to display preview. Download preview PDF.

Unable to display preview. Download preview PDF.

References

  1. Brockwell P, Davis R (1991) Time series: theory and methods. Springer, HeidelbergGoogle Scholar
  2. Diggle PJ, Al-Wasel I (1993) On periodogram-based spectral estimation for replicated time series. In: Rao S (ed) Developments in time series analysis. Chapman and Hall, London, pp 341–354Google Scholar
  3. Diggle PJ, Al-Wasel I (1997) Spectral analysis of replicated biomedical time series. Appl Stat 46:31–71MATHMathSciNetGoogle Scholar
  4. Franke J, Härdle W (1992) On bootstraping kernel spectral estimates. Ann Stat 20:121–145MATHCrossRefGoogle Scholar
  5. Hernández-Flores C, Artiles-Romero J, Saavedra-Santana P (1999) Estimation of the population spectrum with replicated time series. Comput Stat Data Anal 30:271–280MATHCrossRefGoogle Scholar
  6. Katznelson Y (1976) An introduction to harmonic analysis. Dover, New YorkMATHGoogle Scholar
  7. Priestley M (1981) Spectral analysis and time series. Academic, BostonMATHGoogle Scholar
  8. R Development Core Team (2003) R: a language and environment for statistical computing, R Foundation for Statistical Computing, Vienna, Austria. http://www.R-project.orgGoogle Scholar
  9. Saavedra P, Hernández C, Artiles J (2000) Spectral analysis with replicated time series. Commun Stat Theory Methods 29:2343–2362CrossRefGoogle Scholar

Copyright information

© Springer-Verlag 2007

Authors and Affiliations

  • P. Saavedra
    • 1
  • C. N. Hernández
    • 1
  • I. Luengo
    • 1
  • J. Artiles
    • 1
  • A. Santana
    • 1
  1. 1.Department of MathematicsUniversity of Las Palmas de Gran CanariaLas Palmas de Gran CanariaSpain

Personalised recommendations