# R: Calculating MSE

I've got a function, I've added noise to it, then smoothed it to get a regression line. How can I find the MSE between the original function and the regression line at 30 equally spaced points?

Or, how can I give R an x value and get the y value on a regression line?

This is a scaled down version of my problem:

``````> test<- function(m) {3*m^2+7*m+2}
> r=rnorm(10)
> m=1:10/10
> plot(test(m)+r)
> lines(smooth.spline(1:10,test(m)+r),col="red")
``````

So I've got the true function values at the 10 equally spaced points i.e. test(m). I just need a way to extract the smooth.spline values at those 10 points, then I should be able to calculate MSE.

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I'm using smooth.spline –  Els Jan 8 '13 at 14:58
Could you show a reproducible example- that is, show your data (or a subset of it) using `dput`, then show the code you used to smooth it? That would make it much easier to answer in a way that's helpful to you –  David Robinson Jan 8 '13 at 16:25

``````y <- test(m)+r
Guessing you meant "mult by `n/(n-length(r))`" or some such (although at the moment that would be nonsense so what did you mean)? –  BondedDust Jan 8 '13 at 23:01
I just meant `r` as some measure of effective df of the model (a little hard to figure out for a smoothing spine anyway). I just forgot we'd already used that symbol. –  Ben Bolker Jan 8 '13 at 23:36
Using `\$df` to access a 'smooth.spline'-classed object is possible. Since I suspect you knew that, I'm wondering what your objections to its use might be? –  BondedDust Jan 9 '13 at 0:06