Bootstrap linear regression MSE

16 vues (au cours des 30 derniers jours)
Moh Aljoh
Moh Aljoh le 27 Juil 2019
Modifié(e) : Adam Danz le 28 Juil 2019
I am trying to use bootstrap on the MSE, R-squared output generated from linear regression model. However, I am having trouble figuring out how to set it up with the correct arguments.
I tried to do something like:
X1 = outcomes;
X2 = modcomes;
mdl = LinearModel.fit(X1, X2);
resid = outcomes - modcomes;
% Simple bootstrap example
N_Boot = 1000;
SSE = zeros(N_Boot,1);
R_Sqrd = zeros(N_Boot,1);
for i = 1:N_Boot
[foo_b , GoF_b] = LinearModel.fit(modcomes, outcomes + resid);
SSE(i) = GoF_b.sse;
R_Sqrd(i) = GoF_b.rsquare;
end
mean(SSE)
std(SSE)
mean(R_Sqrd)
std(R_Sqrd)
  1 commentaire
Adam Danz
Adam Danz le 28 Juil 2019
Modifié(e) : Adam Danz le 28 Juil 2019
If you're using matlab r2013b or later, you should use fitlm() instead of LinearModel.fit(). They have virtually the same inputs and both produce the LinearModel object. The model contains a field "Residuals" that contains (you guessed it) the residuals of the model. There is no documented second output and I haven't tried doing that myself so I'm not sure what's in the 2nd output in your code.
What are modcomes and outcomes?

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