| Literature DB >> 26855437 |
Robert T Krafty1, Martica Hall2, Wensheng Guo3.
Abstract
In many experiments, time series data can be collected from multiple units and multiple time series segments can be collected from the same unit. This article introduces a mixed effects Cramér spectral representation which can be used to model the effects of design covariates on the second-order power spectrum while accounting for potential correlations among the time series segments collected from the same unit. The transfer function is composed of a deterministic component to account for the population-average effects and a random component to account for the unit-specific deviations. The resulting log-spectrum has a functional mixed effects representation where both the fixed effects and random effects are functions in the frequency domain. It is shown that, when the replicate-specific spectra are smooth, the log-periodograms converge to a functional mixed effects model. A data-driven iterative estimation procedure is offered for the periodic smoothing spline estimation of the fixed effects, penalized estimation of the functional covariance of the random effects, and unit-specific random effects prediction via the best linear unbiased predictor.Keywords: Cramér representation; Mixed effects model; Replicated time series; Smoothing spline; Spectral analysis
Year: 2011 PMID: 26855437 PMCID: PMC4743435 DOI: 10.1093/biomet/asr032
Source DB: PubMed Journal: Biometrika ISSN: 0006-3444 Impact factor: 2.445