Lecture 34 Fixed vs Random Effects - Purdue University
MIXED Procedure • Better than GLM / VARCOMP, but also somewhat more complex to use. Advantage is that it has options specifically for mixed models proc mixed data =a1 cl ; class officer; model rating=; random officer / vcorr ; • Note: random effects are included ONLY in the random statement; fixed effects in the model statement.
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