AbstractFor observations from an auto-regressive moving-average process on any number of dimensions, we propose a modification of the Gaussian likelihood, which when maximized corrects the edge-effects and fixes the order of the bias for the estimators derived. We show that the new estimators are not only consistent but also asymptotically normal for any dimensionality. A classical one-dimensional, time series result for the variance matrix is established on any number of dimensions and guarantees the efficiency of the estimators, if the original process is Gaussian. We have followed a model-based approach and we have used finite numbers for the corrections per dimension, which are especially made for the case of the auto-regressive moving-...
An approximate maximum-likelihood estimator is derived for ARMA (autoregressive moving-average) proc...
An approximate maximum-likelihood estimator is derived for ARMA (autoregressive moving-average) proc...
For about thirty years, time series models with time-dependent coefficients have sometimes been cons...
AbstractFor observations from an auto-regressive moving-average process on any number of dimensions,...
We provide a direct proof for consistency and asymptotic normality of Gaussian maximum likelihood es...
This paper examines the Gaussian maximum likelihood estimator (GMLE) in the context of a general for...
This paper examines the Gaussian maximum likelihood estimator (GMLE) in the context of a general for...
This paper examines the Gaussian maximum likelihood estimator (GMLE) in the context of a general for...
This paper examines the Gaussian maximum likelihood estimator (GMLE) in the context of a general for...
This paper examines the Gaussian maximum likelihood estimator (GMLE) in the context of a general for...
This paper examines the Gaussian maximum likelihood estimator (GMLE) in the context of a general for...
Regression procedures for parameter estimation in autoregression moving average (ARMA) models are di...
Regression procedures for parameter estimation in autoregression moving average (ARMA) models are di...
The problem of modelling time series driven by non-Gaussian innovations is considered. The asymptoti...
An approximate maximum-likelihood estimator is derived for ARMA (autoregressive moving-average) proc...
An approximate maximum-likelihood estimator is derived for ARMA (autoregressive moving-average) proc...
An approximate maximum-likelihood estimator is derived for ARMA (autoregressive moving-average) proc...
For about thirty years, time series models with time-dependent coefficients have sometimes been cons...
AbstractFor observations from an auto-regressive moving-average process on any number of dimensions,...
We provide a direct proof for consistency and asymptotic normality of Gaussian maximum likelihood es...
This paper examines the Gaussian maximum likelihood estimator (GMLE) in the context of a general for...
This paper examines the Gaussian maximum likelihood estimator (GMLE) in the context of a general for...
This paper examines the Gaussian maximum likelihood estimator (GMLE) in the context of a general for...
This paper examines the Gaussian maximum likelihood estimator (GMLE) in the context of a general for...
This paper examines the Gaussian maximum likelihood estimator (GMLE) in the context of a general for...
This paper examines the Gaussian maximum likelihood estimator (GMLE) in the context of a general for...
Regression procedures for parameter estimation in autoregression moving average (ARMA) models are di...
Regression procedures for parameter estimation in autoregression moving average (ARMA) models are di...
The problem of modelling time series driven by non-Gaussian innovations is considered. The asymptoti...
An approximate maximum-likelihood estimator is derived for ARMA (autoregressive moving-average) proc...
An approximate maximum-likelihood estimator is derived for ARMA (autoregressive moving-average) proc...
An approximate maximum-likelihood estimator is derived for ARMA (autoregressive moving-average) proc...
For about thirty years, time series models with time-dependent coefficients have sometimes been cons...