Ridge regression and MSE

Hi I am comparing MSE of OLS and ridge regression in order to determine which estimate is best. Is there some command or procedure in MATLAB how to get MSE of the ridge estimate??
Thanks

 Accepted Answer

Well, since MSE is simply the mean of the squares of the errors...
MSE = mean((y-yhat).^2);
Won't that suffice?

More Answers (4)

Robby
Robby on 21 Mar 2011

0 votes

But how do you get yhat for ridge regression in matlab? for OLS you simply do regstats command, but what command do you use for ridge regression statistics? is there one?
Thanks.
Richard Willey
Richard Willey on 21 Mar 2011

0 votes

Use the "scaled" option to restore the coefficient estimates to the scale of the original data.
You can then use b to estimate yhat.
b = ridge(y,X,k,scaled) uses the {0,1}-valued flag scaled to determine if the coefficient estimates in b are restored to the scale of the original data
Robby
Robby on 21 Mar 2011

0 votes

So for the 'scaled' option I use original data matrix X and response variable y (i.e. uncentered and unscaled)? If so, beta will have a constant included, and so in order to estimate yhat I need to add a column of ones in X right?
Thanks again
pemfir
pemfir on 11 Dec 2011

0 votes

there are 2 version of MSE MSE = SSE/(n-q) unlike what John D'Errico said this is not simply the mean of errors. notice the denominator. it is n-q where q is the number of parameters in the model.
the second MSE which you should use (sometimes people use "mse" lower case to differentiate it with the first MSE) is MSE = bias^2 + var Since ridge regression tries to reduce Var by introducing bias, the second version is what you need to use.
the expression for it is a bit long, but you can find it easily in regression books such as "introduction to linear regression analysis" by Montgomery in the chapter on "multicollinearity"

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