loss returns very low values in feature forward selection
1 visualizzazione (ultimi 30 giorni)
Mostra commenti meno recenti
Esmeralda Ruiz Pujadas
il 21 Gen 2022
Commentato: Esmeralda Ruiz Pujadas
il 4 Feb 2022
Dear all,
I wonder because loss returns very low values different to classification error in Feature forward selection. For example:
classifierfun = @(train_data,train_labels,test_data,test_labels) ...
loss(fitcsvm(train_data,train_labels,'KernelFunction',
'gaussian','KernelScale','auto','Standardize',true),test_data,test_labels,'LossFun', 'ClassifError');
[fs,history] = sequentialfs(classifierfun,table2array(TableFeaturesNormalized),Y,'
cv',c,'nfeatures',min(size(TableFeaturesNormalized,2),max_its_fs),'options',opts)
I get
Step 1, added column 178, criterion value 0.00996737
Step 2, added column 245, criterion value 0.00997051
The same in here
opts = statset(‘display’,’iter’);
costfun = @(XT,yT,Xt,yt)loss(fitcecoc(XT,yT),Xt,yt);
[fs, history] = sequentialfs(costfun, X_train,
y_train, ‘cv’, cv, ‘options’, opts);
why is this criterion value so low if it is a classification error?
However, if I do
classifierfun = @(train_data,train_labels,test_data,test_labels) ...
sum(predict(fitcsvm(train_data,train_labels,'KernelFunction', 'gaussian','Standardize',true),
test_data) ~= test_labels);
The values make sense
Step 1, added column 178, criterion value 0.36233363
Step 2, added column 245, criterion value 0.35302325
Thank you for the help
0 Commenti
Risposta accettata
Kumar Pallav
il 1 Feb 2022
Hi,
As per my understanding, sequentialfs sums the values returned by 'classifierfun' and divides that sum by the total number of test observations. This is the reason you are getting low values of criterion. You may refer this for details on sequentialfs.
Hope it helps!
Più risposte (0)
Vedere anche
Categorie
Scopri di più su Get Started with Statistics and Machine Learning Toolbox in Help Center e File Exchange
Community Treasure Hunt
Find the treasures in MATLAB Central and discover how the community can help you!
Start Hunting!