loadingsUnrotated factor loadings. If a Heywood case is
present in the initial solution then the model is re-estimated via
non-iterated principal axes with max(rij^2) as fixed communaility (h2)
estimates.
h2Vector of final commonality estimates.
uniquenessVector of factor uniquenesses, i.e. (1 - h2).
Heywood(logical) TRUE if a Heywood case was produced in the LS
solution.
TreatHeywood(logical) Value of the TreatHeywood
argument.
converged(logical) TRUE if all values of the gradient are
sufficiently close to zero.
MaxAbsGradThe maximum absolute value of
the gradient at the solution.
f.valueThe discrepancy value associated with the final solution.