A Cepstral Model for Efficient Spectral Analysis of Covariate-dependent Time Series
This article introduces a novel and computationally fast model to study the association between covariates and power spectra of replicated time series. A random covariate-dependent Cram\'{e}r spectral representation and a semiparametric log-spectral model are used to quantify the association be...
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Zusammenfassung: | This article introduces a novel and computationally fast model to study the
association between covariates and power spectra of replicated time series. A
random covariate-dependent Cram\'{e}r spectral representation and a
semiparametric log-spectral model are used to quantify the association between
the log-spectra and covariates. Each replicate-specific log-spectrum is
represented by the cepstrum, inducing a cepstral-based multivariate linear
model with the cepstral coefficients as the responses. By using only a small
number of cepstral coefficients, the model parsimoniously captures frequency
patterns of time series and saves a significant amount of computational time
compared to existing methods. A two-stage estimation procedure is proposed. In
the first stage, a Whittle likelihood-based approach is used to estimate the
truncated replicate-specific cepstral coefficients. In the second stage,
parameters of the cepstral-based multivariate linear model, and consequently
the effect functions of covariates, are estimated. The model is flexible in the
sense that it can accommodate various estimation methods for the multivariate
linear model, depending on the application, domain knowledge, or
characteristics of the covariates. Numerical studies confirm that the proposed
method outperforms some existing methods despite its simplicity and shorter
computational time. Supplementary materials for this article are available
online. |
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DOI: | 10.48550/arxiv.2407.01763 |