This article considers the problem of order selection of the vector autoregressive moving-average models and of the sub-class of the vector autoregressive models under the assumption that the errors are uncorrelated but not necessarily independent. We propose a modified version of the AIC (Akaike information criterion). This criterion requires the estimation of the matrice involved in the asymptotic variance of the quasi-maximum likelihood estimator of these models. Monte carlo experiments show that the proposed modified criterion estimates the model orders more accurately than the standard AIC and AICc (corrected AIC) in large samples and often in small samples
A bias correction to the Akaike information criterion, AIC, is derived for regression and autoregres...
This paper examines the problem of order selection in connection to the forecasting performance for ...
The asymptotic properties of the quasi-maximum likelihood estimator (QMLE) of vector autoregressive ...
This article considers the problem of order selection of the vector autoregressive moving-average mo...
This article considers the problem of order selection of the vector autoregressive moving-average mo...
This article considers the problem of orders selections of vector autoregressive moving-average (VAR...
This article considers the problem of orders selections of vector autoregressive moving-average (VAR...
The goal of this thesis is to study the vector autoregressive moving-average (V)ARMA models with unc...
In this paper, a new small-sample model selection criterion for vector autoregressive (VAR) models i...
The Akaike information criterion, AIC, is widely used for model selection. Using the AIC as the esti...
The asymptotic properties of the quasi-maximum likelihood estimator (QMLE) of vector autoregressive ...
For regression and time series model selection, Hurvich and Tsai (1989) obtained a bias correction A...
This study is undertaken with the objective of investigating the performance of Akaike's Information...
Estimation of the expected Kullback-Leibler information is the basis for deriving the Akaike informa...
The purpose of this paper is to compare different autoregressive models performance in case of incor...
A bias correction to the Akaike information criterion, AIC, is derived for regression and autoregres...
This paper examines the problem of order selection in connection to the forecasting performance for ...
The asymptotic properties of the quasi-maximum likelihood estimator (QMLE) of vector autoregressive ...
This article considers the problem of order selection of the vector autoregressive moving-average mo...
This article considers the problem of order selection of the vector autoregressive moving-average mo...
This article considers the problem of orders selections of vector autoregressive moving-average (VAR...
This article considers the problem of orders selections of vector autoregressive moving-average (VAR...
The goal of this thesis is to study the vector autoregressive moving-average (V)ARMA models with unc...
In this paper, a new small-sample model selection criterion for vector autoregressive (VAR) models i...
The Akaike information criterion, AIC, is widely used for model selection. Using the AIC as the esti...
The asymptotic properties of the quasi-maximum likelihood estimator (QMLE) of vector autoregressive ...
For regression and time series model selection, Hurvich and Tsai (1989) obtained a bias correction A...
This study is undertaken with the objective of investigating the performance of Akaike's Information...
Estimation of the expected Kullback-Leibler information is the basis for deriving the Akaike informa...
The purpose of this paper is to compare different autoregressive models performance in case of incor...
A bias correction to the Akaike information criterion, AIC, is derived for regression and autoregres...
This paper examines the problem of order selection in connection to the forecasting performance for ...
The asymptotic properties of the quasi-maximum likelihood estimator (QMLE) of vector autoregressive ...