how to train svm classifier by 3 features
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In my project I need to classify benign tumor and malignant tumor using svm classifier.I have extracted 3 features from each benign tumor and malignant tumor.But I dont know how to train non linear gaussian kernelfunction in svm using three features. I am beginner to matlab. please help me with matlab code.
Thank you
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Sameer
il 29 Mag 2025
Hi @ANANDHI
To train a non-linear SVM classifier using a Gaussian kernel (also called RBF kernel) in MATLAB, the "fitcsvm" function can be used with the "KernelFunction" set to "rbf".
Assuming the features are stored in a matrix "features" and the corresponding class labels (e.g., 0 for benign and 1 for malignant) are stored in a vector "labels", the training can be done like this:
SVMModel = fitcsvm(features, labels, 'KernelFunction', 'rbf');
Each row in "features" should represent one sample (tumor), and each column should represent one of the three extracted features. The "labels" vector should have the same number of elements as the number of rows in "features".
This will train an SVM with a Gaussian (RBF) kernel using the three features provided.
Below is the MathWorks documentation link to know more about "fitcsvm" :
Hope this helps!
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