# Determining the goodness of an R fit using lm()

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)

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

Coefficients:
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?

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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

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)
names(rs)
``````

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

EDIT

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`.

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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
x2=1:6
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:

``````summary(lm(y2~x2))\$sigma
``````

See this for further details:

``````?summary.lm
``````
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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:

``````resettest(...)
bptest(...)
``````

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.

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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