SAS Software to Fit the Generalized Linear Model
نویسنده
چکیده
In recent years, the class of generalized linear models has gained popularity as a statistical modeling tool. This popularity is due in part to the flexibility of generalized linear models in addressing a variety of statistical problems and to the availability of software to fit the models. The SAS system provides two new tools that fit generalized linear models. The GENMOD procedure in SAS/STAT software is available in release 6.09 of the SAS system and in experimental form in release 6.08. SAS/INSIGHT software provides a generalized linear modeling capability in release 6.08. This paper introduces generalized linear models and reviews the SAS software that fits the models.
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