We consider dependence structures in multivariate time series that are characterized by deterministic trends. Results from spectral analysis for stationary processes are extended to deterministic trend functions. A regression cross covariance and spectrum are defined. Estimation of these quantities is based on wavelet thresholding. The method is illustrated by a simulated example and a three-dimensional time series consisting of ECG, blood pressure and cardiac stroke volume measurements.Nonparametric trend estimation, cross spectrum, wavelets, regression spectrum, phase, threshold estimator
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AbstractWe consider dependence structures in multivariate time series that are characterized by dete...
We consider dependence structures in multivariate time series that are characterized by deterministi...
Spectral analysis of multivariate time series has been an active field of methodological and applied...
The role of spectral and cross spectral analysis of time series is emphasized and the mathematical p...
Spectral Analysis of Multivariate Time Series has been an active field of methodological and applied...
The last ten years have witnessed an increasing interest of the econometrics community in spectral t...
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This article gives an overview on nonparametric modelling of nonstationary time series and estimatio...
In spectral analysis of high dimensional multivariate time series, it is crucial to obtain an estima...
Spectral density built as Fourier transform of covariance sequence of stationary random process is ...
AbstractWe consider dependence structures in multivariate time series that are characterized by dete...
We consider dependence structures in multivariate time series that are characterized by deterministi...
Spectral analysis of multivariate time series has been an active field of methodological and applied...
The role of spectral and cross spectral analysis of time series is emphasized and the mathematical p...
Spectral Analysis of Multivariate Time Series has been an active field of methodological and applied...
The last ten years have witnessed an increasing interest of the econometrics community in spectral t...
In this paper we give the main uses of wavelets in statistics, with emphasis in time series analysis...
This thesis deals with the applications of wavelet theory to time series data. We first focus on sta...
This thesis provides a necessary and sufficient condition for asymptotic efficiency of a nonparametr...
We analyse the properties of nonparametric spectral estimates when applied to long memory and trendi...
This paper studies the use of spectral regression techniques in the context of cointegrated systems ...
We derive uniform convergence results of lag-window spectral density estimates for a general class o...
This article gives an overview on nonparametric modelling of nonstationary time series and estimatio...
In spectral analysis of high dimensional multivariate time series, it is crucial to obtain an estima...
Spectral density built as Fourier transform of covariance sequence of stationary random process is ...