AbstractWe show that if a process can be obtained by filtering an autoregressive process, then the asymptotic distribution of sample autocovariances of the former is the same as the asymptotic distribution of linear combinations of sample autocovariances of the latter. This result is used to show that for small lags the sample autocovariances of the filtered process have the same asymptotic distribution as estimators utilizing more information (observations on the associated autoregression process and knowledge of the parameters of the filter). In particular, for a Gaussian ARMA process the first few sample autocovariances are jointly asymptotically efficient
AbstractWe establish consistency and derive asymptotic distributions for estimators of the coefficie...
It was recently proved that any strictly stationary stochastic process can be viewed as an autoregre...
We develop a new asymptotic theory for autocorrelation robust tests using a vector autoregressive (V...
We show that if a process can be obtained by filtering an autoregressive process, then the asymptoti...
AbstractWe show that if a process can be obtained by filtering an autoregressive process, then the a...
AbstractThe asymptotic normality of sample autocovariances is proved for time series with mixed-spec...
In this paper the large sample behaviour of the sample autocorrelation matrix Rn(h), (h being the la...
Abstract: The paper presents a systematic theory for asymptotic inference of autocovariances of stat...
AbstractWe consider a stationary time series {Xt} given by Xt = ΣkψkZt − k, where the driving stream...
AbstractWe develop a technique for derivation of the asymptotic joint distribution of the sample par...
The exact statistics of the estimated reflection coefficients for an autoregressive process are diff...
AbstractThis paper quantifies the form of the asymptotic covariance matrix of the sample autocovaria...
AbstractThis paper establishes several almost sure asymptotic properties of general autoregressive p...
We study the sample autocovariance and autocorrelation function of the stationary AR(1) process with...
Abstract. A desirable property of an autocovariance estimator is to be robust to the pres-ence of ad...
AbstractWe establish consistency and derive asymptotic distributions for estimators of the coefficie...
It was recently proved that any strictly stationary stochastic process can be viewed as an autoregre...
We develop a new asymptotic theory for autocorrelation robust tests using a vector autoregressive (V...
We show that if a process can be obtained by filtering an autoregressive process, then the asymptoti...
AbstractWe show that if a process can be obtained by filtering an autoregressive process, then the a...
AbstractThe asymptotic normality of sample autocovariances is proved for time series with mixed-spec...
In this paper the large sample behaviour of the sample autocorrelation matrix Rn(h), (h being the la...
Abstract: The paper presents a systematic theory for asymptotic inference of autocovariances of stat...
AbstractWe consider a stationary time series {Xt} given by Xt = ΣkψkZt − k, where the driving stream...
AbstractWe develop a technique for derivation of the asymptotic joint distribution of the sample par...
The exact statistics of the estimated reflection coefficients for an autoregressive process are diff...
AbstractThis paper quantifies the form of the asymptotic covariance matrix of the sample autocovaria...
AbstractThis paper establishes several almost sure asymptotic properties of general autoregressive p...
We study the sample autocovariance and autocorrelation function of the stationary AR(1) process with...
Abstract. A desirable property of an autocovariance estimator is to be robust to the pres-ence of ad...
AbstractWe establish consistency and derive asymptotic distributions for estimators of the coefficie...
It was recently proved that any strictly stationary stochastic process can be viewed as an autoregre...
We develop a new asymptotic theory for autocorrelation robust tests using a vector autoregressive (V...