Sign up ×
Stack Overflow is a community of 4.7 million programmers, just like you, helping each other. Join them, it only takes a minute:

I learned to get a linear fit with some points using lm in my R script. So, I did that (which worked nice), and printed out the fit:

lm(formula = y2 ~ x2)

         1          2          3          4 
 5.000e+00 -1.000e+01  5.000e+00  7.327e-15 

            Estimate Std. Error t value Pr(>|t|)   
(Intercept)   70.000     17.958   3.898  0.05996 . 
x2            85.000      3.873  21.947  0.00207 **
Signif. codes:  0 ‘***’ 0.001 ‘**’ 0.01 ‘*’ 0.05 ‘.’ 0.1 ‘ ’ 1 

Residual standard error: 8.66 on 2 degrees of freedom
Multiple R-squared: 0.9959, Adjusted R-squared: 0.9938 
F-statistic: 481.7 on 1 and 2 DF,  p-value: 0.00207 

I'm trying to determine the best way to judge how great this fit is. I need to compare this fit with a few others (which are also linear using lm() method). What value from this summary would be the best way to judge how good this fit is? I was thinking to use the residual standard error. Any suggestions. Also, how do I extract that value from the fit variable?

share|improve this question
This question over on stats.SE is essentially an exactly dup, although the accepted answer basically says to go read a statistics book. –  joran Aug 18 '11 at 21:24
but how do I get the values out of the fit variable? –  CodeGuy Aug 18 '11 at 21:41
Gee, I wonder if there's a problem with correlation here... –  Brandon Bertelsen Aug 18 '11 at 22:59

3 Answers 3

up vote 2 down vote accepted

If you want to access the pieces produced by summary directly, you can just call summary and store the result in a variable and then inspect the resulting object:

rs <- summary(lm1)

Perhaps rs$sigma is what you're looking for?


Before someone chides me, I should point out that for some of this information, this is not the recommended way to access it. Rather you should use the designated extractors like residuals() or coef.

share|improve this answer
but for sigma, is this okay? –  CodeGuy Aug 18 '11 at 21:55
@reising1 - I believe so, yes. The primary recommended extractors are coef, fitted and residuals, I believe. Don't quote me on that being a complete list, though. –  joran Aug 18 '11 at 21:59
thanks a lot for your help –  CodeGuy Aug 18 '11 at 22:04

This code would do something similar:

 y2 <- seq(1, 11, by=2)+rnorm(6)  # six data points to your four points
 lm(y2 ~ x2)
 summary(lm(y2 ~ x2))

The adjusted R^2 is the "goodness of fit" measure. It is saying that 99% of the variance in y2 can be "explained" by a straight line fit of y2 to x2. Whether you want to interpret your model with only 4 data points on the basis of that result is a matter of judgment. It would seem to somewhat dangerous to me.

To extract the residual sum of squares you use:


See this for further details:

share|improve this answer
I see how to print summary, but how do I get values out of the summary? I want to get the residual standard error. –  CodeGuy Aug 18 '11 at 21:48

There are some nice regression diagnostic plots you can look at with

plot(YourRegression, which=1:6)

where which=1:6 give you all six plots. The RESET test and bptest will test for misspecification and heteroskedasticity:


There are a lot of resources out there to think about this sort of thing. Fitting Distributions in R is one of them, and Faraway's "Practical Regression and Anova" is an R classic. I basically learned econometrics in R from Farnsworth's paper/book, although I don't recall if he has anything about goodness of fit.

If you are going to do a lot of econometrics in R, Applied Econometrics in R is a great pay-for book. And I've used the R for Economists webpage a lot.

Those are the first ones that pop to mind. I will mull a little more.

share|improve this answer
but how do I get the values out of the fit variable? I want to get the residual standard error –  CodeGuy Aug 18 '11 at 21:41

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.