AbstractPhillips and Magdalinos (2007) [1] gave the asymptotic theory for autoregressive time series with a root of the form ρn=1+c/kn, where kn is a deterministic sequence. In this paper, an extension to the more general case where the coefficients of an AR(1) model is a random variable and the error sequence is a sequence of martingale differences is discussed. A conditional least squares estimator of the autoregressive coefficient is derived and shown to be asymptotically normal. This extends the result of Phillips and Magdalinos (2007) [1] for stationary and near-stationary cases
In this paper, we consider the normalized least squares estimator of the parameter in a mildly stati...
We investigate the asymptotic behavior of the least squares estimator of the unknown parameters of r...
Abstract. We investigate the asymptotic behavior of the least squares estima-tor of the unknown para...
AbstractPhillips and Magdalinos (2007) [1] gave the asymptotic theory for autoregressive time series...
summary:This work deals with a multivariate random coefficient autoregressive model (RCA) of the fir...
Assuming that the errors of an autoregressive process form a sequence of martingale differences, the...
summary:This work deals with a multivariate random coefficient autoregressive model (RCA) of the fir...
Consider a sequence of random variables which obeys a first order autoregressive model with unknown ...
summary:This work deals with Random Coefficient Autoregressive models where the error process is a m...
summary:This work deals with Random Coefficient Autoregressive models where the error process is a m...
summary:This work deals with Random Coefficient Autoregressive models where the error process is a m...
A random coefficient autoregressive process is deeply investigated in which the coefficients are cor...
AbstractFor a stable autoregressive process of order p with unknown vector parameter θ, it is shown ...
AbstractWe give a characterization of random-coefficient autoregressive processes of order 1, using ...
The random coefficient integer-valued autoregressive process was recently introduced by Zheng, Basaw...
In this paper, we consider the normalized least squares estimator of the parameter in a mildly stati...
We investigate the asymptotic behavior of the least squares estimator of the unknown parameters of r...
Abstract. We investigate the asymptotic behavior of the least squares estima-tor of the unknown para...
AbstractPhillips and Magdalinos (2007) [1] gave the asymptotic theory for autoregressive time series...
summary:This work deals with a multivariate random coefficient autoregressive model (RCA) of the fir...
Assuming that the errors of an autoregressive process form a sequence of martingale differences, the...
summary:This work deals with a multivariate random coefficient autoregressive model (RCA) of the fir...
Consider a sequence of random variables which obeys a first order autoregressive model with unknown ...
summary:This work deals with Random Coefficient Autoregressive models where the error process is a m...
summary:This work deals with Random Coefficient Autoregressive models where the error process is a m...
summary:This work deals with Random Coefficient Autoregressive models where the error process is a m...
A random coefficient autoregressive process is deeply investigated in which the coefficients are cor...
AbstractFor a stable autoregressive process of order p with unknown vector parameter θ, it is shown ...
AbstractWe give a characterization of random-coefficient autoregressive processes of order 1, using ...
The random coefficient integer-valued autoregressive process was recently introduced by Zheng, Basaw...
In this paper, we consider the normalized least squares estimator of the parameter in a mildly stati...
We investigate the asymptotic behavior of the least squares estimator of the unknown parameters of r...
Abstract. We investigate the asymptotic behavior of the least squares estima-tor of the unknown para...