We consider nonparametric estimation of the parameter functions a(i)(.), i = 1, ..., p, of a time-varying autoregressive process. Choosing an orthonormal wavelet basis representation of the Functions a(i), the empirical wavelet coefficients are derived from the time series data as the solution of a least-squares minimization problem. In order to allow the a(i) to be functions of inhomogeneous regularity, we apply nonlinear thresholding to the empirical coefficients and obtain locally smoothed estimates of the a(i). We show that the resulting estimators attain the usual minimax L-2 rates up to a logarithmic factor, simultaneously in a large scale of Besov classes. The finite-sample behaviour of our procedure is demonstrated by application to...
This article defines and studies a new class of non-stationary random processes constructed from dis...
With this article we first like to give a brief review on wavelet thresholding methods in non-Gaussi...
With this article we first like to give a brief review on wavelet thresholding methods in non-Gaussi...
We consider nonparametric estimation of the coefficients a_i(.), i=1,...,p, on a time-varying autore...
We consider nonparametric estimation of the coefficients ai(·), i = 1,...,p , of a time-varying auto...
We fit a class of semiparametric models to a nonstationary process. This class is parametrized by a ...
We estimate nonlinear autoregressive models using a design-adapted wavelet estimator. We show two pr...
In the modeling of biological phenomena, in living organisms whether the measurements are of blood p...
We consider wavelet estimation of the time-dependent (evolutionary) power spectrum of a locally stat...
We derive minimax rates for estimation in anisotropic smoothness classes. This rate is attained by a...
An important aspect in the modelling of biological phenomena in living organisms, whether the measur...
We consider wavelet estimation of the time-dependent (evolutionary) power spectrum of a locally stat...
We derive minimax rates for estimation in anisotropic smoothness classes. These rates are attained b...
AbstractWe fit a class of semiparametric models to a nonstationary process. This class is parametriz...
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...
With this article we first like to give a brief review on wavelet thresholding methods in non-Gaussi...
With this article we first like to give a brief review on wavelet thresholding methods in non-Gaussi...
We consider nonparametric estimation of the coefficients a_i(.), i=1,...,p, on a time-varying autore...
We consider nonparametric estimation of the coefficients ai(·), i = 1,...,p , of a time-varying auto...
We fit a class of semiparametric models to a nonstationary process. This class is parametrized by a ...
We estimate nonlinear autoregressive models using a design-adapted wavelet estimator. We show two pr...
In the modeling of biological phenomena, in living organisms whether the measurements are of blood p...
We consider wavelet estimation of the time-dependent (evolutionary) power spectrum of a locally stat...
We derive minimax rates for estimation in anisotropic smoothness classes. This rate is attained by a...
An important aspect in the modelling of biological phenomena in living organisms, whether the measur...
We consider wavelet estimation of the time-dependent (evolutionary) power spectrum of a locally stat...
We derive minimax rates for estimation in anisotropic smoothness classes. These rates are attained b...
AbstractWe fit a class of semiparametric models to a nonstationary process. This class is parametriz...
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...
With this article we first like to give a brief review on wavelet thresholding methods in non-Gaussi...
With this article we first like to give a brief review on wavelet thresholding methods in non-Gaussi...