We propose a new asymptotic approximation for the sampling behaviour of nonparametric estimators of the spectral density of a covariance stationary time series. According to the standard approach, the truncation lag grows more slowly than the sample size. We derive first-order limiting distributions under the alternative assumption that the truncation lag is a fixed proportion of the sample size. Our results extend the approach of Neave (1970), who derived a formula for the asymptotic variance of spectral density estimators under the same truncation lag assumption. We show that the limiting distribution of zero-frequency spectral density estimators depends on how the mean is estimated and removed. The implications of our zero-frequency resu...
We analyse the properties of nonparametric spectral estimates when applied to long memory and trendi...
We establish valid Edgeworth expansions for the distribution of smoothed nonparametric spectral esti...
We propose a new test statistic for trend stationarity against difference stationarity using spectra...
Pre-print; author's draft dated February 10, 2007. The definitive version is available at http://www...
The asymptotic behavior of nonparametric estimators of the probability density function of an i.i.d....
Recent work in econometrics has provided large bandwidth asymptotic theory for taper-based studentiz...
AbstractLet X = {X(t), − ∞ < t < ∞} be a continuous-time stationary process with spectral density fu...
The density function of the limiting spectral distribution of general sample covariance matrices is ...
This thesis is concerned with nonparametric techniques for inferring properties of time series. Firs...
Locally stationary processes are characterised by spectral densities that are functions of rescaled...
AbstractWeakly and strongly consistent nonparametric estimates, along with rates of convergence, are...
In this paper, we construct a new class of kernel by exponentiating conventional kernels and use the...
Gaussian time-series models are often specified through their spectral density. Such models present ...
In the presence of heteroscedasticity and autocorrelation of unknown forms, the covariance matrix of...
Weakly and strongly consistent nonparametric estimates, along with rates of convergence, are establi...
We analyse the properties of nonparametric spectral estimates when applied to long memory and trendi...
We establish valid Edgeworth expansions for the distribution of smoothed nonparametric spectral esti...
We propose a new test statistic for trend stationarity against difference stationarity using spectra...
Pre-print; author's draft dated February 10, 2007. The definitive version is available at http://www...
The asymptotic behavior of nonparametric estimators of the probability density function of an i.i.d....
Recent work in econometrics has provided large bandwidth asymptotic theory for taper-based studentiz...
AbstractLet X = {X(t), − ∞ < t < ∞} be a continuous-time stationary process with spectral density fu...
The density function of the limiting spectral distribution of general sample covariance matrices is ...
This thesis is concerned with nonparametric techniques for inferring properties of time series. Firs...
Locally stationary processes are characterised by spectral densities that are functions of rescaled...
AbstractWeakly and strongly consistent nonparametric estimates, along with rates of convergence, are...
In this paper, we construct a new class of kernel by exponentiating conventional kernels and use the...
Gaussian time-series models are often specified through their spectral density. Such models present ...
In the presence of heteroscedasticity and autocorrelation of unknown forms, the covariance matrix of...
Weakly and strongly consistent nonparametric estimates, along with rates of convergence, are establi...
We analyse the properties of nonparametric spectral estimates when applied to long memory and trendi...
We establish valid Edgeworth expansions for the distribution of smoothed nonparametric spectral esti...
We propose a new test statistic for trend stationarity against difference stationarity using spectra...