
Kaiser (1958) suggested normalizing factor loadings before rotating them, and then denormalizing them after rotation. The GPArotation package does not (by default) normalize, nor does the fa
function. Then, to make it more confusing, varimax in stats does,Varimax in GPArotation does not. kaiser
will take the output of a non-normalized solution and report the normalized solution.
kaiser(f, rotate = "oblimin",m=4,pro.m=4)
A factor analysis output from fa
or a factor loading matrix.
Any of the standard rotations avaialable in the GPArotation package.
a parameter to pass to Promax
A redundant parameter, which is used to replace m in calls to Promax
See the values returned by GPArotation functions
Best results if called from an unrotated solution. Repeated calls using a rotated solution will produce incorrect estimates of the correlations between the factors.
Kaiser, H. F. (1958) The varimax criterion for analytic rotation in factor analysis. Psychometrika 23, 187-200.
# NOT RUN {
f3 <- fa(Thurstone,3)
f3n <- kaiser(fa(Thurstone,3,rotate="none"))
f3p <- kaiser(fa(Thurstone,3,rotate="none"),rotate="Promax",m=3)
factor.congruence(list(f3,f3n,f3p))
# }
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