# Factor Analysis in R

I'm trying to get a better understanding on FA, hope you can take a look at this, my biggest problem is how to interpret FA model in R.

My results look like this: What values in my results should I be looking at and what is a good indication of FA analysis?

``````Call:
factanal(x = m2, factors = 2)

Uniquenesses:
v1 v2 v3 v4 v5 v6 v7 v8 v9 v10 v11 v12
0.005 0.324 0.344 0.092 0.084 0.128 0.271 0.272 0.398 0.384 0.540 0.472

Factor1 Factor2
v1 0.847 0.527
v2 0.818
v3 0.733 0.344
v4 0.938 0.169
v5 0.949 0.125
v6 0.825 0.437
v7 0.701 0.488
v8 0.646 0.557
v9 0.467 0.619
v10 0.665 0.417
v11 0.525 0.429
v12 0.581 0.436

Factor1 Factor2
Proportion Var 0.492 0.232
Cumulative Var 0.492 0.724

Test of the hypothesis that 2 factors are sufficient.
The chi square statistic is 410.82 on 43 degrees of freedom.
The p-value is 1.59e-61
``````
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I may just be uneducated here, but what exactly is an "FA model"? – RCIX Nov 28 '09 at 6:06
FA = Factor Analysis, en.wikipedia.org/wiki/Factor_analysis – twolfe18 Nov 28 '09 at 6:16
This is a statistics question, not a programming question. – hadley Nov 28 '09 at 15:35
I am no expert - but for that exact reason I normally fray away from FA. Instead try do if you can construct a meaningfull latent index from your variables. Then use a reliability ruotine to check for e.g. alpha value. The reliability function from the Rcmdr package is very intuitive. Lots of other functions exists though - look e.g. at the psych package. With only 12 variables - this is what I would do. – Andreas Nov 28 '09 at 19:35