how to use multisvm

4 views (last 30 days)
shafna mtp
shafna mtp on 1 Mar 2017
Answered: Purvaja on 3 Feb 2025
i want to use svm classifier for 4 class classification, and want to know how can i use svm for multiclass

Answers (1)

Purvaja
Purvaja on 3 Feb 2025
I see that you wish to classify multiple classes using SVM. We can achieve this using “ClassificationECOC” function. You can perform the following steps:
  • Assume some data with 4 classes for prediction
  • Combine the classes into a single dataset
data = [class1; class2; class3; class4];
X = data(:, 1:2); % Features
Y = data(:, 3); % Labels
  • Train the SVM model using fitcecoc
svmModel = fitcecoc(X, Y);
  • Display the trained model
disp(svmModel);
  • Make predictions on the training data
predictions = predict(svmModel, X);
  • Calculate accuracy
accuracy = sum(predictions == Y) / length(Y) * 100;
fprintf('Accuracy: %.2f%%\n', accuracy);
  • Get predictions for some points
Predictions = predict(svmModel, Points);
You can check another example by simply typing this command in your MATLAB command window:
openExample('stats/TrainAnECOCClassifierUsingSVMLearnersExample')
For more clarification details on the functions used, you can refer “ClassificationECOC”, check out the following in documentation:
Hope this helps you!!

Tags

Community Treasure Hunt

Find the treasures in MATLAB Central and discover how the community can help you!

Start Hunting!