AbstractWe discuss a maximum likelihood procedure for estimating parameters in possibly noncausal autoregressive processes driven by i.i.d. non-Gaussian noise. Under appropriate conditions, estimates of the parameters that are solutions to the likelihood equations exist and are asymptotically normal. The estimation procedure is illustrated with a simulation study for AR(2) processes
[[abstract]]Proposes a new nonlinear parameter estimation method for a noncausal autoregressive (AR)...
An application of the empirical likelihood method to non-Gaussian locally stationary processes is pr...
A procedure for solving exact maximum likelihood estimation (MLE) is proposed for non-invertible non...
AbstractWe discuss a maximum likelihood procedure for estimating parameters in possibly noncausal au...
The problem of estimating the parameters of a non-Gaussian autoregressive process is addressed. Depa...
A technique for the estimation of autoregressive filter parameters of a non-Gaussian autoregressive ...
We consider maximum likelihood estimation for both causal and noncausal autoregressive time series p...
We consider an approximate maximum likelihood algorithm for estimating parameters of possibly non-ca...
The paper considers the problem of estimating the autoregressive parameter in the first-order autore...
AbstractThe maximum likelihood estimator of a parameter vector is obtained for some multidimensional...
AbstractAn approximate maximum likelihood procedure is proposed for the estimation of parameters in ...
We investigate the estimation of parameters in the random coefficient autoregressive (RCA) model X ...
This paper considers the problem of estimating the autoregressive parameter in discretely observed O...
The problem addressed in this paper is that of estimating signal and noise parameters from a mixture...
This paper considers the problem of estimating the parameters of an autoregressive (AR) process in p...
[[abstract]]Proposes a new nonlinear parameter estimation method for a noncausal autoregressive (AR)...
An application of the empirical likelihood method to non-Gaussian locally stationary processes is pr...
A procedure for solving exact maximum likelihood estimation (MLE) is proposed for non-invertible non...
AbstractWe discuss a maximum likelihood procedure for estimating parameters in possibly noncausal au...
The problem of estimating the parameters of a non-Gaussian autoregressive process is addressed. Depa...
A technique for the estimation of autoregressive filter parameters of a non-Gaussian autoregressive ...
We consider maximum likelihood estimation for both causal and noncausal autoregressive time series p...
We consider an approximate maximum likelihood algorithm for estimating parameters of possibly non-ca...
The paper considers the problem of estimating the autoregressive parameter in the first-order autore...
AbstractThe maximum likelihood estimator of a parameter vector is obtained for some multidimensional...
AbstractAn approximate maximum likelihood procedure is proposed for the estimation of parameters in ...
We investigate the estimation of parameters in the random coefficient autoregressive (RCA) model X ...
This paper considers the problem of estimating the autoregressive parameter in discretely observed O...
The problem addressed in this paper is that of estimating signal and noise parameters from a mixture...
This paper considers the problem of estimating the parameters of an autoregressive (AR) process in p...
[[abstract]]Proposes a new nonlinear parameter estimation method for a noncausal autoregressive (AR)...
An application of the empirical likelihood method to non-Gaussian locally stationary processes is pr...
A procedure for solving exact maximum likelihood estimation (MLE) is proposed for non-invertible non...