A non-parametric estimator of the spectral density of a continuous-time gaussian process observed at random times

Jean Marc Bardet, Pierre R. Bertrand

Research output: Contribution to journalArticlepeer-review

Abstract

In numerous applications data are observed at random times and an estimated graph of the spectral density may be relevant for characterizing and explaining phenomena. By using a wavelet analysis, one derives a non-parametric estimator of the spectral density of a Gaussian process with stationary increments (or a stationary Gaussian process) from the observation of one path at random discrete times. For every positive frequency, this estimator is proved to satisfy a central limit theorem with a convergence rate depending on the roughness of the process and the moment of random durations between successive observations. In the case of stationary Gaussian processes, one can compare this estimator with estimators based on the empirical periodogram. Both estimators reach the same optimal rate of convergence, but the estimator based on wavelet analysis converges for a different class of random times. Simulation examples and an application to biological data are also provided.

Original languageEnglish
Pages (from-to)458-476
Number of pages19
JournalScandinavian Journal of Statistics
Volume37
Issue number3
DOIs
Publication statusPublished - 1 Jan 2010
Externally publishedYes

Keywords

  • Continuous wavelet transform
  • Fractional Brownian motion
  • Gaussian processes observed at random times
  • Heartbeat series
  • Multiscale fractional Brownian motion
  • Non-parametric estimation
  • Spectral density

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