Azzera filtri
Azzera filtri

SVM parameter optimization using GA

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Josh
Josh il 3 Dic 2022
Commentato: Josh il 7 Dic 2022
I am facing issues of high prediction error. Please help.
load data1.mat
X = data1(1:83,1:end-1);
Y = data1(1:83,end);
X1 = data1(84:end,1:end-1);
Y1 = data1(84:end,end);
c = cvpartition(Y,'KFold',5,'Stratify',false);
fobj = @(x)kfoldLoss(fitrsvm(X,Y,'CVPartition',c,'KernelFunction','gaussian','BoxConstraint', x(1),'KernelScale',x(2),'Epsilon',x(3)));
intcon = 1; % intcon is the indicator of integer variables
lb = [1e-3,1e-3,1e-3]; % set lower bounds
ub = [1e3,1e1,1e1]; % set upper bounds
[sol,fval] = ga(fobj,3,[],[],[],[],lb,ub,[],intcon);
FinalModel = fitrsvm(X,Y,'KernelFunction', 'gaussian','BoxConstraint', sol(1),'KernelScale',sol(2),'Epsilon',sol(3));
yfit = predict(FinalModel, X1);
RMSE = rmse(yfit,Y1)
  1 Commento
Josh
Josh il 3 Dic 2022
Modificato: Josh il 4 Dic 2022
Someone have a look and drop a response please.

Accedi per commentare.

Risposte (1)

Sudarshan
Sudarshan il 7 Dic 2022
Hi Josh,
I tried running the script and reproducing the high RMSE values.
  • The RMSE value decreases on taking a higher number of training samples.
  • Instead of using just 83 samples for X, I used 150 samples, and the RMSE significantly decreased from 0.15 to 0.008.
  • The reason for the high RMSE value could be that there are less training samples.
You could try increasing the size of the training dataset and see if that solves the issue.
  1 Commento
Josh
Josh il 7 Dic 2022
Thank you Sir for the kind reply when others ignored to drop a reply in the community.
I understand your point of more training samples to reduce the error value, which is true.
Also I wish to improve the error on these samples if possible.
I am not sure how to achieve that.

Accedi per commentare.

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