For about thirty years, time series models with time-dependent coefficients have sometimes been considered as an alternative to models with constant coefficients or non-linear models. Analysis based on models with time-dependent models has long suffered from the absence of an asymptotic theory except in very special cases. The purpose of this paper is to provide such a theory without using a locally stationary spectral representation and time rescaling. We consider autoregressive-moving average (ARMA) models with time-dependent coefficients and a heteroscedastic innovation process. The coefficients and the innovation variance are deterministic functions of time which depend on a finite number of parameters. These parameters are estimated by...
We consider a standard ARMA process of the form phi(B)X(t) = B(B)Z(t), where the innovations Z(t) be...
We consider a standard ARMA process of the form phi(B)X(t) = B(B)Z(t), where the innovations Z(t) be...
We consider a standard ARMA process of the form phi(B)X(t) = B(B)Z(t), where the innovations Z(t) be...
The problem of modelling time series driven by non-Gaussian innovations is considered. The asymptoti...
Autoregressive-moving average (ARMA) models with time-dependent (td) coefficients and marginally het...
In this paper, we consider the estimation of time-varying ARMA models subject to Markovian changes i...
We consider a standard ARMA process of the form phi(B)X(t) = B(B)Z(t), where the innovations Z(t) be...
This paper is about vector autoregressive-moving average models with time-dependent coefficients to ...
This paper is about vector autoregressive-moving average models with time-dependent coefficients to ...
Abstract. This paper considers estimation of ARMA models with time-varying coefficients. The ARMA pa...
peer reviewedThis paper is about vector autoregressive-moving average models with time-dependent coe...
This paper is about vector autoregressive-moving average (VARMA) models with time-dependent coeffici...
An algorithm for the evaluation of the exact Gaussian likelihood of an r-dimensional vector autoregr...
Strong consistency and asymptotic normality of a Gaussian quasi-maximum likelihood estimator for the...
We consider a standard ARMA process of the form phi(B)X(t) = B(B)Z(t), where the innovations Z(t) be...
We consider a standard ARMA process of the form phi(B)X(t) = B(B)Z(t), where the innovations Z(t) be...
We consider a standard ARMA process of the form phi(B)X(t) = B(B)Z(t), where the innovations Z(t) be...
We consider a standard ARMA process of the form phi(B)X(t) = B(B)Z(t), where the innovations Z(t) be...
The problem of modelling time series driven by non-Gaussian innovations is considered. The asymptoti...
Autoregressive-moving average (ARMA) models with time-dependent (td) coefficients and marginally het...
In this paper, we consider the estimation of time-varying ARMA models subject to Markovian changes i...
We consider a standard ARMA process of the form phi(B)X(t) = B(B)Z(t), where the innovations Z(t) be...
This paper is about vector autoregressive-moving average models with time-dependent coefficients to ...
This paper is about vector autoregressive-moving average models with time-dependent coefficients to ...
Abstract. This paper considers estimation of ARMA models with time-varying coefficients. The ARMA pa...
peer reviewedThis paper is about vector autoregressive-moving average models with time-dependent coe...
This paper is about vector autoregressive-moving average (VARMA) models with time-dependent coeffici...
An algorithm for the evaluation of the exact Gaussian likelihood of an r-dimensional vector autoregr...
Strong consistency and asymptotic normality of a Gaussian quasi-maximum likelihood estimator for the...
We consider a standard ARMA process of the form phi(B)X(t) = B(B)Z(t), where the innovations Z(t) be...
We consider a standard ARMA process of the form phi(B)X(t) = B(B)Z(t), where the innovations Z(t) be...
We consider a standard ARMA process of the form phi(B)X(t) = B(B)Z(t), where the innovations Z(t) be...
We consider a standard ARMA process of the form phi(B)X(t) = B(B)Z(t), where the innovations Z(t) be...