Determination of the lag length of an autoregressive process is one of the most difficult parts of ARIMA modeling. Various lag length selection criteria (Akaike Information Criterion, Schwarz Information Criterion, Hannan-Quinn Criterion, Final Prediction Error, Corrected version of AIC) have been proposed in the literature to overcome this difficulty. We have compared these criteria for lag length selection for three different cases that is under normal errors, under non-normal errors and under structural break by using Monte Carlo simulation. It has been found that SIC is the best for large samples and no criteria is useful for selecting true lag length in presence of regime shifts or shocks to the system
We study the impact of the system dimension on commonly used model selection criteria (AIC,BIC, HQ) ...
Bauer D. Information-Criterion-Based Lag Length Selection in Vector Autoregressive Approximations fo...
We study the impact of the system dimension on commonly used model selection criteria (AIC, BIC, HQ)...
Determination of the lag length of an autoregressive process is one of the most difficult parts of A...
Determination of the lag length of an autoregressive process is one of the most difficult parts of A...
Estimating the lag length of autoregressive process for a time series is a crucial econometric exerc...
Estimating the lag length of autoregressive process for a time series is a crucial econometric exerc...
Estimating the lag length of autoregressive process for a time series is a crucial econometric exerc...
In most economic researches, the selection of autoregressive order based for an economic time series...
We study the effects of ARCH errors on the performance of the commonly used lag length selection cri...
Most economic data are time series in nature and one of the popular methods used to model the time s...
Most economic data are time series in nature and one of the popular methods used to model the time s...
We study the impact of the system dimension on commonly used model selection criteria (AIC, BIC, HQ)...
We study the impact of the system dimension on commonly used model selection criteria (AIC, BIC, HQ)...
International audienceThis paper investigates the lag length selection problem of a vector error cor...
We study the impact of the system dimension on commonly used model selection criteria (AIC,BIC, HQ) ...
Bauer D. Information-Criterion-Based Lag Length Selection in Vector Autoregressive Approximations fo...
We study the impact of the system dimension on commonly used model selection criteria (AIC, BIC, HQ)...
Determination of the lag length of an autoregressive process is one of the most difficult parts of A...
Determination of the lag length of an autoregressive process is one of the most difficult parts of A...
Estimating the lag length of autoregressive process for a time series is a crucial econometric exerc...
Estimating the lag length of autoregressive process for a time series is a crucial econometric exerc...
Estimating the lag length of autoregressive process for a time series is a crucial econometric exerc...
In most economic researches, the selection of autoregressive order based for an economic time series...
We study the effects of ARCH errors on the performance of the commonly used lag length selection cri...
Most economic data are time series in nature and one of the popular methods used to model the time s...
Most economic data are time series in nature and one of the popular methods used to model the time s...
We study the impact of the system dimension on commonly used model selection criteria (AIC, BIC, HQ)...
We study the impact of the system dimension on commonly used model selection criteria (AIC, BIC, HQ)...
International audienceThis paper investigates the lag length selection problem of a vector error cor...
We study the impact of the system dimension on commonly used model selection criteria (AIC,BIC, HQ) ...
Bauer D. Information-Criterion-Based Lag Length Selection in Vector Autoregressive Approximations fo...
We study the impact of the system dimension on commonly used model selection criteria (AIC, BIC, HQ)...