How to calculate accuracy, F1 score & entropy?
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Here is my data ""
Now I have to split this dataset into 70% training set & 30% test set....
Then I have to calculate accuracy, F1 score & entropy using some classifiers. They are Decision tree, knn, svm
How can I do this? Please help
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Yazan
on 23 Aug 2021
This is not a question, but rather an assignment. See Mathworks examples on the Statistics and Machine Learning Toolbox.
Answers (1)
Ram Patro
on 9 Dec 2021
The data you have provided does not contain class label information. When you have the class label vector 'classLabel', you can partition data using cvpartition function.
per = 10; % Training percentage
cv = cvpartition(classLabel,HoldOut=1-(per/100));
'cv.training' lists all the training location indices that you can use to partition the data. Similarly '~cv.training' lists all the testing location indices.
For classification, you can refer to the examples:
- fitctree function for decision tree classifier.
- fitcknn function for K- neareset neighbour classifier
- fitcsvm function for binary models of SVM classification
- fitcecoc function for multiclass models of SVM classification.
After obtaining your classification results, you can refer:
- confusionmat and confusionchart for preparing the confusion matrix.
- crossentropy function to calculate cross-entropy loss
- this for other binary classification measures.
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