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find optimal hyperparameters in SVM

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khatere darvish
khatere darvish el 1 de Nov. de 2020
Comentada: khatere darvish el 2 de Nov. de 2020
Hello
I'm trying to optimize a SVM model for my training data then predict the labels of new data with it. Also I must find SVM with best hyperparameter by using k-fold crossvalidation. TO do so I wrote the following code:
Mdl = fitcsvm(trainingData,labels,'OptimizeHyperparameters','auto',...
'HyperparameterOptimizationOptions',struct('Optimizer','gridsearch','AcquisitionFunctionName',...
'expected-improvement-per-second','MaxObjectiveEvaluation',10,'ShowPlots',false,'Verbose',0));
label = predict(Mdl,testData);
the problem is every time I ran this code and calculated the classification accuracy for test data I got different classification accuracy.
I should mention that when I train SVM without optimizing hyperparameters results are alaways the same. Is this mean every time I have diffierent hyperparameters? How can I solve this and obtain unique classification accuracy?

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Alan Weiss
Alan Weiss el 2 de Nov. de 2020
Read what the bayesopt documentation has to say about your chosen acquisition function: "Acquisition functions whose names include per-second do not yield reproducible results because the optimization depends on the runtime of the objective function. " In other words, choose the 'expected-improvement-plus' or 'expected-improvement' acquisition function for reproducibility.
Alan Weiss
MATLAB mathematical toolbox documentation
  3 comentarios
Alan Weiss
Alan Weiss el 2 de Nov. de 2020
The other possibility is to reset the random number stream before each optimization:
rng default % Or any seed you like
Alan Weiss
MATLAB mathematical toolbox documentation
khatere darvish
khatere darvish el 2 de Nov. de 2020
thank you it's working now

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