The Akaike information criterion, AIC, and its corrected version, AICc are two methods for selecting normal linear regression models. Both criteria were designed as estimators of the expected Kullback-Leibler information between the model generating the data and the approximating candidate model. In this paper, two new corrected variants of AIC are derived for the purpose of small sample linear regression model selection. The proposed variants of AIC are based on asymptotic approximation of bootstrap type estimates of Kullback-Leibler information. These new variants are of particular interest when the use of bootstrap is not really justified in terms of the required calculations. As its the case for AICc, these new variants are asymptotical...
The Akaike information criterion, AIC, is widely used for model selection. Using the AIC as the esti...
We propose two model selection criteria relying on the bootstrap approach, denoted by QAICb1 and QAI...
We develop a small sample criterion (L1cAIC) for the selection of least absolute deviations regressi...
Estimation of the expected Kullback-Leibler information is the basis for deriving the Akaike informa...
The Akaike information criterion, AIC, and its corrected version, AIC c are two methods for selectin...
Estimation of Kullback-Leibler amount of information is a crucial part of deriving a statistical mod...
A bias correction to the Akaike information criterion, AIC, is derived for regression and autoregres...
Abstract: Two bootstrap-corrected variants of the Akaike information criterion are proposed for the ...
For regression and time series model selection, Hurvich and Tsai (1989) obtained a bias correction A...
In semiparametric regression models, we have developed a small-sample criterion, AICC, for the selec...
The Akaike information criterion (AIC) is a widely used tool for model selection. AIC is derived as ...
developed for the purpose of small-sample state-space model selection. Our variant of AIC utilizes b...
The Akaike information criterion, AIC, and the Mallows ' Cp criterion have been pro-posed as ap...
A new estimator, AIC;, of the Kullback-Leibler information is proposed for Gaussian autoregressive t...
The selection of an appropriate model is a fundamental step of the data analysis in small area estim...
The Akaike information criterion, AIC, is widely used for model selection. Using the AIC as the esti...
We propose two model selection criteria relying on the bootstrap approach, denoted by QAICb1 and QAI...
We develop a small sample criterion (L1cAIC) for the selection of least absolute deviations regressi...
Estimation of the expected Kullback-Leibler information is the basis for deriving the Akaike informa...
The Akaike information criterion, AIC, and its corrected version, AIC c are two methods for selectin...
Estimation of Kullback-Leibler amount of information is a crucial part of deriving a statistical mod...
A bias correction to the Akaike information criterion, AIC, is derived for regression and autoregres...
Abstract: Two bootstrap-corrected variants of the Akaike information criterion are proposed for the ...
For regression and time series model selection, Hurvich and Tsai (1989) obtained a bias correction A...
In semiparametric regression models, we have developed a small-sample criterion, AICC, for the selec...
The Akaike information criterion (AIC) is a widely used tool for model selection. AIC is derived as ...
developed for the purpose of small-sample state-space model selection. Our variant of AIC utilizes b...
The Akaike information criterion, AIC, and the Mallows ' Cp criterion have been pro-posed as ap...
A new estimator, AIC;, of the Kullback-Leibler information is proposed for Gaussian autoregressive t...
The selection of an appropriate model is a fundamental step of the data analysis in small area estim...
The Akaike information criterion, AIC, is widely used for model selection. Using the AIC as the esti...
We propose two model selection criteria relying on the bootstrap approach, denoted by QAICb1 and QAI...
We develop a small sample criterion (L1cAIC) for the selection of least absolute deviations regressi...