Anon

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Autoregressive Moving Average Models 175


AIC) when there are seven lags—denoted by AR(7). For the BIC, however,
the model is optimal is when n is one (i.e., AR(1)).
In practice it is important to check for the adequacy of the selected
model. If the model is adequate, the residual series of the model should
behave as white noise or should have no autocorrelation. For this purpose,
the Q-statistic can be employed. The Q-statistic tests whether the joint


table 9.2 Autoregressive Model: Akaike Information Criterion (AIC) and
Bayesian Information Criterion (BIC) for the Weekly Sample Returns of CRSP
Value-Weighted Index (yt) from January 1998 through October 2012


Lags AIC BIC


1 2.032 2.044*


2 2.030 2.048
3 2.030 2.054


4 2.031 2.061


5 2.033 2.069


6 2.029 2.071


7 2.025* 2.074


8 2.029 2.083


9 2.031 2.092


10 2.035 2.102
11 2.038 2.111


12 2.039 2.118


13 2.043 2.128


14 2.046 2.137


15 2.041 2.138


16 2.045 2.148


17 2.048 2.158


18 2.052 2.169
19 2.056 2.179


20 2.060 2.189


21 2.064 2.199


22 2.066 2.208


23 2.070 2.218


24 2.073 2.227


A model is selected based on the calculated minimum of either AIC or BIC.



  • Denotes minimum values.

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