statsmodels.tools.eval_measures.aic_sigma¶
- statsmodels.tools.eval_measures.aic_sigma(sigma2, nobs, df_modelwc, islog=False)[source]¶
Akaike information criterion
- Parameters:
- Returns:
- aic
float
information criterion
- aic
Notes
A constant has been dropped in comparison to the loglikelihood base information criteria. The information criteria should be used to compare only comparable models.
For example, AIC is defined in terms of the loglikelihood as
\(-2 llf + 2 k\)
in terms of \(\hat{\sigma}^2\)
\(log(\hat{\sigma}^2) + 2 k / n\)
in terms of the determinant of \(\hat{\Sigma}\)
\(log(\|\hat{\Sigma}\|) + 2 k / n\)
Note: In our definition we do not divide by n in the log-likelihood version.
TODO: Latex math
reference for example lecture notes by Herman Bierens
References