This article introduces a data-adaptive nonparametric approach for the estimation of time-varying spectral densities from nonstationary time series. Time-varying spectral densities are commonly estimated by local kernel smoothing. The performance of these nonparametric estimators, however, depends crucially on the smoothing bandwidths that need to be specified in both time and frequency direction. As an alternative and extension to traditional bandwidth selection methods, we propose an iterative algorithm for constructing localized smoothing kernels data-adaptively. The main idea, inspired by the concept of propagation-separation, is to determine for a point in the time-frequency plane the largest local vicinity over which smoothing is just...
One popular method for nonparametric spectral density estimation is to perform kernel smoothing on t...
Journal PaperCurrent theories of a time-varying spectrum of a nonstationary process all involve, eit...
Bandwidth choice is crucial in spatial kernel estimation in exploring non-Gaussian complex spatial d...
This article introduces a data-adaptive nonparametric approach for the estimation of time-varying sp...
This article introduces a data-adaptive nonparametric approach for the estimation of time-varying sp...
This article introduces a data-adaptive nonparametric approach for the estimation of time-varying sp...
This article introduces a data-adaptive nonparametric approach for the estimation of time-varying sp...
This article introduces a data-adaptive nonparametric approach for the estimation of time-varying sp...
This article introduces a data-adaptive nonparametric approach for the estimation of time-varying sp...
When analyzing a stationary time series, one of the questions we are often interested in is how to e...
The application of Singular Spectrum Analysis (SSA) to the empirical distribution function sampled a...
Kernel smoothing on the periodogram is a popular nonparametric method for spectral density estimatio...
A new time-varying autoregressive modeling has been proposed as a tool for time-frequency analysis o...
n this article we introduce a nonparametric estimator of the spectral density by smoothing the perio...
This article gives an overview on nonparametric modelling of nonstationary time series and estimatio...
One popular method for nonparametric spectral density estimation is to perform kernel smoothing on t...
Journal PaperCurrent theories of a time-varying spectrum of a nonstationary process all involve, eit...
Bandwidth choice is crucial in spatial kernel estimation in exploring non-Gaussian complex spatial d...
This article introduces a data-adaptive nonparametric approach for the estimation of time-varying sp...
This article introduces a data-adaptive nonparametric approach for the estimation of time-varying sp...
This article introduces a data-adaptive nonparametric approach for the estimation of time-varying sp...
This article introduces a data-adaptive nonparametric approach for the estimation of time-varying sp...
This article introduces a data-adaptive nonparametric approach for the estimation of time-varying sp...
This article introduces a data-adaptive nonparametric approach for the estimation of time-varying sp...
When analyzing a stationary time series, one of the questions we are often interested in is how to e...
The application of Singular Spectrum Analysis (SSA) to the empirical distribution function sampled a...
Kernel smoothing on the periodogram is a popular nonparametric method for spectral density estimatio...
A new time-varying autoregressive modeling has been proposed as a tool for time-frequency analysis o...
n this article we introduce a nonparametric estimator of the spectral density by smoothing the perio...
This article gives an overview on nonparametric modelling of nonstationary time series and estimatio...
One popular method for nonparametric spectral density estimation is to perform kernel smoothing on t...
Journal PaperCurrent theories of a time-varying spectrum of a nonstationary process all involve, eit...
Bandwidth choice is crucial in spatial kernel estimation in exploring non-Gaussian complex spatial d...