Title of article :
Optimal lag-length choice in stable and unstable VAR models under situations of homoscedasticity and ARCH
Author/Authors :
R. Scott Hacker & Abdulnasser Hatemi-J، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2008
Abstract :
The performance of different information criteria – namely Akaike, corrected Akaike (AICC), Schwarz–
Bayesian (SBC), and Hannan–Quinn – is investigated so as to choose the optimal lag length in stable
and unstable vector autoregressive (VAR) models both when autoregressive conditional heteroscedasticity
(ARCH) is present and when it is not. The investigation covers both large and small sample sizes. The
Monte Carlo simulation results show that SBC has relatively better performance in lag-choice accuracy
in many situations. It is also generally the least sensitive to ARCH regardless of stability or instability of
the VAR model, especially in large sample sizes. These appealing properties of SBC make it the optimal
criterion for choosing lag length in many situations, especially in the case of financial data, which are
usually characterized by occasional periods of high volatility. SBC also has the best forecasting abilities
in the majority of situations in which we vary sample size, stability, variance structure (ARCH or not),
and forecast horizon (one period or five). frequently, AICC also has good lag-choosing and forecasting
properties. However, when ARCH is present, the five-period forecast performance of all criteria in all
situations worsens.
Keywords :
VAR , Information criteria , lag length , Monte Carlo simulations , ARCH , C30 , stabilityJEL classification: C32
Journal title :
JOURNAL OF APPLIED STATISTICS
Journal title :
JOURNAL OF APPLIED STATISTICS