10 fold cross validation

11 vues (au cours des 30 derniers jours)
uma
uma le 13 Avr 2022
Réponse apportée : uma le 16 Juin 2022
how to use 10 fold cross validation in Multilayer extreme learning machine

Réponse acceptée

Demet
Demet le 19 Avr 2022
Modifié(e) : Demet le 19 Avr 2022
Hello,
I have never used Multilayer extreme learning machine but i found this. The code below was written assuming that the code in this link is correct and It would be helpful for you
data= dlmread('data\\inputs1.txt'); %inputs
groups=dlmread('data\\targets1.txt'); % target
Fold=10;
indices = crossvalind('Kfold',length(groups),Fold);
for i =1:Fold
testy = (indices == i);
trainy = (~testy);
TestInputData=data(testy,:)';
TrainInputData=data(trainy,:)';
TestOutputData=groups(testy,:)';
TrainOutputData=groups(trainy,:)';
number_neurons=[1000 100 100 100];% acchetecture of network
NL=4;
ELM_Type=1;
[training_Acuracy]=MLP_elm_train(TrainInputData,TrainOutputData,number_neurons,ELM_Type,NL);%training
training_Acuracy_f(fold)=training_Acuracy; %keep training acc for each fold
[testing_Accuracy,output]=MLP_elm_predict(TestInputData, TestOutputData,ELM_Type,NL);%testing
testing_Accuracy_f(Fold)=testing_Accuracy;% keep testing acc for each fold
end
  1 commentaire
uma
uma le 15 Juin 2022
thank you so much.

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Plus de réponses (1)

uma
uma le 16 Juin 2022
how we can specify the input and target data as i have a dataset namely segment attached here.

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