In this paper we consider the problem of measuring stationarity in locally stationary long-memory processes. We introduce an L2-distance between the spectral density of the locally stationary process and its best approximation under the assumption of stationarity. The dis-tance is estimated by a numerical approximation of the integrated spectral periodogram and asymptotic normality of the resulting estimate is established. The results can be used to con-struct a simple test for the hypothesis of stationarity in locally stationary long-range dependent processes. We also propose a bootstrap procedure to improve the approximation of the nominal level and prove its consistency. Throughout the paper, we will work with Riemann sums of a squared p...
Generalizing the definition of the memory parameter d in terms of the differentiated series, we show...
Generalizing the definition of the memory parameter d in terms of the differentiated series, we show...
There exist several estimators of the memory parameter in long-memory time series models with mean µ...
In this paper we consider the problem of measuring stationarity in locally stationary longmemory pr...
This paper is devoted to the discrimination between a stationary long-range dependent model and a no...
An important problem in time series analysis is the discrimination between non-stationarity and long...
Spectral analysis of strongly dependent time series data has a long history in applications in a var...
We consider parameter estimation for time-dependent locally stationary long-memory processes. The as...
We consider parameter estimation for time-dependent locally stationary long-memory processes. The as...
We consider parameter estimation for time-dependent locally sta-tionary long-memory processes. The a...
An important problem in time series analysis is the discrimination between non-stationarity and long...
Locally stationary processes are non-stationary stochastic processes the second-order structure of w...
There exists a wide literature on modelling strongly dependent time series using a longmemory parame...
Bootstrap techniques in the frequency domain have been proved to be effective instruments to approx...
AbstractWe derive a functional central limit theorem for the empirical spectral measure or discretel...
Generalizing the definition of the memory parameter d in terms of the differentiated series, we show...
Generalizing the definition of the memory parameter d in terms of the differentiated series, we show...
There exist several estimators of the memory parameter in long-memory time series models with mean µ...
In this paper we consider the problem of measuring stationarity in locally stationary longmemory pr...
This paper is devoted to the discrimination between a stationary long-range dependent model and a no...
An important problem in time series analysis is the discrimination between non-stationarity and long...
Spectral analysis of strongly dependent time series data has a long history in applications in a var...
We consider parameter estimation for time-dependent locally stationary long-memory processes. The as...
We consider parameter estimation for time-dependent locally stationary long-memory processes. The as...
We consider parameter estimation for time-dependent locally sta-tionary long-memory processes. The a...
An important problem in time series analysis is the discrimination between non-stationarity and long...
Locally stationary processes are non-stationary stochastic processes the second-order structure of w...
There exists a wide literature on modelling strongly dependent time series using a longmemory parame...
Bootstrap techniques in the frequency domain have been proved to be effective instruments to approx...
AbstractWe derive a functional central limit theorem for the empirical spectral measure or discretel...
Generalizing the definition of the memory parameter d in terms of the differentiated series, we show...
Generalizing the definition of the memory parameter d in terms of the differentiated series, we show...
There exist several estimators of the memory parameter in long-memory time series models with mean µ...