AbstractFor estimating parameters in an unstable AR(2) model, the paper proposes a sequential least squares estimate with a special stopping time defined by the trace of the observed Fisher information matrix. It is shown that the sequential LSE is asymptotically normally distributed in the stability region and on its boundary in contrast to the usual LSE, having six different types of asymptotic distributions on the boundary depending on the values of the unknown parameters. The asymptotic behavior of the stopping time is studied
We propose abootstrap resampling scheme for the least squares estimator of the parameter of an unsta...
A nearly unstable sequence of stationary spatial autoregressive processes is investigated, where the...
AbstractA nearly unstable sequence of stationary spatial autoregressive processes is investigated, w...
AbstractFor estimating parameters in an unstable AR(2) model, the paper proposes a sequential least ...
Abstract. Sequential least squares estimates are proposed for estimating the unknown parameters in a...
AbstractFor a stable autoregressive process of order p with unknown vector parameter θ, it is shown ...
AbstractFor a stable autoregressive process of order p with unknown vector parameter θ, it is shown ...
AbstractWe show that if an appropriate stopping rule is used to determine the sample size when estim...
This paper deals with inference in a class of stable but nearly-unstable processes. Autoregressive p...
For an autoregressive process of order p, the paper proposes new sequential estimates for the unknow...
Currently, because online data is abundant and can be collected more easily , people often face the ...
AbstractWe show that if an appropriate stopping rule is used to determine the sample size when estim...
Consider a sequence of random variables which obeys a first order autoregressive model with unknown ...
AbstractNearly unstable multidimensional AR models are studied where the coefficient matrices are gi...
AbstractPhillips and Magdalinos (2007) [1] gave the asymptotic theory for autoregressive time series...
We propose abootstrap resampling scheme for the least squares estimator of the parameter of an unsta...
A nearly unstable sequence of stationary spatial autoregressive processes is investigated, where the...
AbstractA nearly unstable sequence of stationary spatial autoregressive processes is investigated, w...
AbstractFor estimating parameters in an unstable AR(2) model, the paper proposes a sequential least ...
Abstract. Sequential least squares estimates are proposed for estimating the unknown parameters in a...
AbstractFor a stable autoregressive process of order p with unknown vector parameter θ, it is shown ...
AbstractFor a stable autoregressive process of order p with unknown vector parameter θ, it is shown ...
AbstractWe show that if an appropriate stopping rule is used to determine the sample size when estim...
This paper deals with inference in a class of stable but nearly-unstable processes. Autoregressive p...
For an autoregressive process of order p, the paper proposes new sequential estimates for the unknow...
Currently, because online data is abundant and can be collected more easily , people often face the ...
AbstractWe show that if an appropriate stopping rule is used to determine the sample size when estim...
Consider a sequence of random variables which obeys a first order autoregressive model with unknown ...
AbstractNearly unstable multidimensional AR models are studied where the coefficient matrices are gi...
AbstractPhillips and Magdalinos (2007) [1] gave the asymptotic theory for autoregressive time series...
We propose abootstrap resampling scheme for the least squares estimator of the parameter of an unsta...
A nearly unstable sequence of stationary spatial autoregressive processes is investigated, where the...
AbstractA nearly unstable sequence of stationary spatial autoregressive processes is investigated, w...