We derive uniform convergence results of lag-window spectral density estimates for a general class of multivariate stationary processes represented by an arbitrary measurable function of iid innovations. Optimal rates of convergence, that hold as both the time series and the cross section dimensions diverge, are obtained under mild and easily verifiable conditions. Our theory complements earlier results, most of which are univariate, which primarily concern in-probability, weak or distributional convergence, yet under a much stronger set of regularity conditions, such as linearity in iid innovations. Based on cross spectral density functions, we then propose a new test for independence between two stationary time series. We also explain the...
AbstractIn a recent paper, Eichler (2008) [11] considered a class of non- and semiparametric hypothe...
We propose a general bootstrap procedure to approximate the null distribution of nonparametric frequ...
A spectral density matrix estimator for stationary stochastic vector processes is studied. As the du...
We derive uniform convergence results of lag-window spectral density estimates for a general class o...
Locally stationary processes are characterised by spectral densities that are functions of rescaled...
AbstractThe asymptotic normality of some spectral estimates, including a functional central limit th...
Weakly and strongly consistent nonparametric estimates, along with rates of convergence, are establi...
The estimation of mutual spectral density with polynomial window of data viewing of stationary stoch...
AbstractWeakly and strongly consistent nonparametric estimates, along with rates of convergence, are...
AbstractWe consider some parametric spectral estimators that can be used in a wide range of situatio...
A spectral density matrix estimator for stationary stochastic vector processes is studied, As the du...
Quantile-and copula-related spectral concepts recently have been considered by various authors. Thos...
AbstractThis paper is concerned with the estimation of the spectral measure of a stationary process....
AbstractThis paper deals with issues pertaining to estimating the spectral density of a stationary h...
We study distributional properties of a quadratic form of a stationary functional time series under ...
AbstractIn a recent paper, Eichler (2008) [11] considered a class of non- and semiparametric hypothe...
We propose a general bootstrap procedure to approximate the null distribution of nonparametric frequ...
A spectral density matrix estimator for stationary stochastic vector processes is studied. As the du...
We derive uniform convergence results of lag-window spectral density estimates for a general class o...
Locally stationary processes are characterised by spectral densities that are functions of rescaled...
AbstractThe asymptotic normality of some spectral estimates, including a functional central limit th...
Weakly and strongly consistent nonparametric estimates, along with rates of convergence, are establi...
The estimation of mutual spectral density with polynomial window of data viewing of stationary stoch...
AbstractWeakly and strongly consistent nonparametric estimates, along with rates of convergence, are...
AbstractWe consider some parametric spectral estimators that can be used in a wide range of situatio...
A spectral density matrix estimator for stationary stochastic vector processes is studied, As the du...
Quantile-and copula-related spectral concepts recently have been considered by various authors. Thos...
AbstractThis paper is concerned with the estimation of the spectral measure of a stationary process....
AbstractThis paper deals with issues pertaining to estimating the spectral density of a stationary h...
We study distributional properties of a quadratic form of a stationary functional time series under ...
AbstractIn a recent paper, Eichler (2008) [11] considered a class of non- and semiparametric hypothe...
We propose a general bootstrap procedure to approximate the null distribution of nonparametric frequ...
A spectral density matrix estimator for stationary stochastic vector processes is studied. As the du...