A bias correction to the Akaike information criterion, AIC, is derived for regression and autoregressive time series models. The correction is of particular use when the sample size is small, or when the number of fitted parameters is a moderate to large fraction of the sample size. The corrected method, called AICC, is asymptotically efficient if the true model is infinite dimensional. Furthermore, when the true model is of finite dimension, AICC is found to provide better model order choices than any other asymptotically efficient method. Applications to nonstationary autoregressive and mixed autoregressive moving average time series models are also discussed. Some key words: AIC; Asymptotic efficiency; Kullback-Leibler information. 1
The Akaike information criterion, AIC, and its corrected version, AIC c are two methods for selectin...
This study is undertaken with the objective of investigating the performance of Akaike's Information...
We develop a small sample criterion (L1cAIC) for the selection of least absolute deviations regressi...
A new estimator, AIC;, of the Kullback-Leibler information is proposed for Gaussian autoregressive t...
For regression and time series model selection, Hurvich and Tsai (1989) obtained a bias correction A...
Estimation of the expected Kullback-Leibler information is the basis for deriving the Akaike informa...
The Akaike information criterion, AIC, and its corrected version, AICc are two methods for selecting...
This study is undertaken with the objective of investigating the performance of Akaike’s Information...
This study is undertaken with the objective of investigating the performance of Akaike’s Information...
This study is undertaken with the objective of investigating the performance of Akaike’s Information...
A bias-corrected Akaike information criterion AICC is derived for self-exciting threshold autoregres...
In semiparametric regression models, we have developed a small-sample criterion, AICC, for the selec...
We consider issues related to the order of an autoregression selected using information criteria. We...
Akaike Information Criterion (AIC) has been used widely as a statistical criterion to compare the ap...
In statistical settings such as regression and time series, we can condition on observed informatio...
The Akaike information criterion, AIC, and its corrected version, AIC c are two methods for selectin...
This study is undertaken with the objective of investigating the performance of Akaike's Information...
We develop a small sample criterion (L1cAIC) for the selection of least absolute deviations regressi...
A new estimator, AIC;, of the Kullback-Leibler information is proposed for Gaussian autoregressive t...
For regression and time series model selection, Hurvich and Tsai (1989) obtained a bias correction A...
Estimation of the expected Kullback-Leibler information is the basis for deriving the Akaike informa...
The Akaike information criterion, AIC, and its corrected version, AICc are two methods for selecting...
This study is undertaken with the objective of investigating the performance of Akaike’s Information...
This study is undertaken with the objective of investigating the performance of Akaike’s Information...
This study is undertaken with the objective of investigating the performance of Akaike’s Information...
A bias-corrected Akaike information criterion AICC is derived for self-exciting threshold autoregres...
In semiparametric regression models, we have developed a small-sample criterion, AICC, for the selec...
We consider issues related to the order of an autoregression selected using information criteria. We...
Akaike Information Criterion (AIC) has been used widely as a statistical criterion to compare the ap...
In statistical settings such as regression and time series, we can condition on observed informatio...
The Akaike information criterion, AIC, and its corrected version, AIC c are two methods for selectin...
This study is undertaken with the objective of investigating the performance of Akaike's Information...
We develop a small sample criterion (L1cAIC) for the selection of least absolute deviations regressi...