I am interested in comparing the fit of robust (i.e., S and MM) and non-robust (i.e., OLS) estimators when applied to a particular data set. The paper entitled "A comparison of robust versions of the AIC based on M, S and MM-estimators" (available at: http://ideas.repec.org/p/ner/leuven/urnhdl123456789-274771.html) presents formulas for robust Akaike information criteria (AIC) for the M, S, and MM estimators. Unfortunately, these omit the term {n + n*ln(2*pi)} that is included in the standard AIC formula used by R's AIC function. Would it be appropriate to either (1) include the term in the robust estimator formulas to make them comparable with the standard AIC formula or (2) omit the term from the standard AIC formula to make it comparable with the robust estimator formulas? All of the models I am comparing include the same independent and dependent variables. Only the estimator is being varied. Also, is anyone aware of an AIC analog that would be applicable to least trimmed squares estimation? -- Jim James W. Shaw, Ph.D., Pharm.D., M.P.H. Assistant Professor Department of Pharmacy Administration College of Pharmacy University of Illinois at Chicago 833 South Wood Street, M/C 871, Room 266 Chicago, IL 60612 Tel.: 312-355-5666 Fax: 312-996-0868 Mobile Tel.: 215-852-3045 [[alternative HTML version deleted]]