It is increasingly being realised that many real world time series are not stationary and exhibit evolving second-order autocovariance or spectral structure. This article introduces a Bayesian approach for modelling the evolving wavelet spectrum of a locally stationary wavelet time series. Our new method works by combining the advantages of a Haar-Fisz transformed spectrum with a simple, but powerful, Bayesian wavelet shrinkage method. Our new method produces excellent and stable spectral estimates and this is demonstrated via simulated data and on differenced infant ECG data. A major additional benefit of the Bayesian paradigm is that we obtain rigorous and useful credible intervals of the evolving spectral structure. We show how the Bayes...
In this paper, we discuss the Bayesian inference in wavelet nonparametric problems. In most ...
We consider wavelet estimation of the time-dependent (evolutionary) power spectrum of a locally stat...
We propose a new approach to wavelet threshold estimation of spectral densities of stationary time s...
It is increasingly being realised that many real world time series are not stationary and exhibit ev...
This article defines and studies a new class of non-stationary random processes constructed from dis...
This article defines and studies a new class of non-stationary random processes constructed from dis...
This article reviews the role of wavelets in statistical time series analysis. We survey work that e...
This article reviews the role of wavelets in statistical time series analysis. We survey work that e...
We propose a new 'Haar–Fisz' technique for estimating the time-varying, piecewise constant local var...
Abstract: The problem of estimating the log-spectrum of a stationary Gaussian time series by Bayesia...
This thesis deals with the applications of wavelet theory to time series data. We first focus on sta...
In wavelet shrinkage and thresholding, most of the standard techniques do not consider information t...
<p>Estimated evolutionary wavelet spectrum using our Bayesian Haar-Fisz method with SW = <i>LA</i><s...
The problem of estimating the log-spectrum of a stationary time series by Bayesian shrinkage of empi...
We consider wavelet estimation of the time-dependent (evolutionary) power spectrum of a locally stat...
In this paper, we discuss the Bayesian inference in wavelet nonparametric problems. In most ...
We consider wavelet estimation of the time-dependent (evolutionary) power spectrum of a locally stat...
We propose a new approach to wavelet threshold estimation of spectral densities of stationary time s...
It is increasingly being realised that many real world time series are not stationary and exhibit ev...
This article defines and studies a new class of non-stationary random processes constructed from dis...
This article defines and studies a new class of non-stationary random processes constructed from dis...
This article reviews the role of wavelets in statistical time series analysis. We survey work that e...
This article reviews the role of wavelets in statistical time series analysis. We survey work that e...
We propose a new 'Haar–Fisz' technique for estimating the time-varying, piecewise constant local var...
Abstract: The problem of estimating the log-spectrum of a stationary Gaussian time series by Bayesia...
This thesis deals with the applications of wavelet theory to time series data. We first focus on sta...
In wavelet shrinkage and thresholding, most of the standard techniques do not consider information t...
<p>Estimated evolutionary wavelet spectrum using our Bayesian Haar-Fisz method with SW = <i>LA</i><s...
The problem of estimating the log-spectrum of a stationary time series by Bayesian shrinkage of empi...
We consider wavelet estimation of the time-dependent (evolutionary) power spectrum of a locally stat...
In this paper, we discuss the Bayesian inference in wavelet nonparametric problems. In most ...
We consider wavelet estimation of the time-dependent (evolutionary) power spectrum of a locally stat...
We propose a new approach to wavelet threshold estimation of spectral densities of stationary time s...