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I run the factor analysis and generated 5 factors. Now, I want to add these factors in the original dataset to run regression keeping these factors using independent variables. Can anybody please tell me how how to do it? The code I used for factor analysis is the following:

result.1<-subset(result,select=c(17:27))
fa.parallel(result.1)
View(result.1)
result.2<-factanal(result.1,factors=5,rotation="promax")
print(result.2)
print(result.2, digits = 2, cutoff = .2, sort = TRUE)
colnames(result.2$loadings)<-c("Fac_1","Fac_2","Fac_3","Fac_4","Fac_5")
print(loadings(result.2), digits = 2, cutoff = .2, sort = TRUE)

I tried to use cbind to get the new variable columns of factors, but unfortunately it didn't work.

result.fac<-cbind(result,result.2)

Regards, Ari

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Please paste the output of dput(result). And kindly go back and accept some answers on your previous questions before asking new ones. –  Ari B. Friedman Jul 27 '11 at 9:41

2 Answers 2

up vote 3 down vote accepted

You have to save the scores computed by factanal and cbind those to the original dataset. E.g.:

data <- mtcars
f <- factanal(data, factors=5, rotation="promax", scores="regression")
data <- cbind(data, f$scores)
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Thank you darcozig! –  Beta Jul 27 '11 at 12:51

You probably have some missing data which results in missing rows in the factor scores matrix. You need to match on rownames, like this:

scores <- result.2$scores
result.fac <- cbind(result[as.integer(rownames(scores)),],scores)
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