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This seems pretty straight forward - I'm most likely not thinking of the right terms.

I have two groups. They show a correlation between group and pre-test scores.

I would like to control for this initial difference among pre-test scores when looking at correlations between group and post test(s).

How do I do this in r?

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 model <- lm(post ~ pre + grp, data=dat)

This is really the simplest case of a repeated measures design and has over the year generated a lot of statistical comment and opinion. I did attempt locating an earlier SO posting but didn't succeed in two attempts so just posted the answer. You may want to go to and search on pre-post with regression or ANOVA.

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Thank you. Looks good. I apologize on not being sure - so the correlation between post score and group (with pre-test variance controlled for) is .03? (intercept) - 0.59 pre -0.3 group 0.03 – Donnied Jul 6 '12 at 16:26
We don't do homework assignments in segments. – 42- Jul 6 '12 at 16:28
? BTW this isn't a homework assignment. I'm trying to use r in contrast to everyone around me using spss. – Donnied Jul 6 '12 at 16:30
Those are not correlation coefficients. They are estimated effects on the measurement scale of scores. – 42- Jul 6 '12 at 16:33
You do not want correlation coefficients. (Or if you really do, you will need to explain what you are doing and why you do not want estimates of effects.) – 42- Jul 6 '12 at 16:37

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