sir, can you please help me to convert this python code into matlab

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#false positive rate,fpr= FP/(TN+FP) OR fpr=1-specificty, tpr=sensitivity
y_pred_knn_p =knn.predict_proba(X_test)[:,1]
models=[y_pred_knn_p]
label=['KNN']
# plotting ROC curves
plt.figure(figsize=(10, 8))
m=np.arange(1)
for m in m:
fpr, tpr,thresholds= metrics.roc_curve(y_test,models[m])
print('model:',label[m])
print('thresholds:',np.round(thresholds,3))
print('tpr: ',np.round(tpr,3))
print('fpr: ',np.round(fpr,3))
plt.plot(fpr,tpr,label=label[m])
plt.xlim([0.0,1.0])
plt.ylim([0.0,1.0])
plt.title('ROC curve for Cancer classifer')
plt.xlabel('False positive rate (1-specificity)')
plt.ylabel('True positive rate (sensitivity)')
plt.legend(loc=4,)

Respuesta aceptada

ANKUR KUMAR
ANKUR KUMAR el 28 de Sept. de 2018
Editada: ANKUR KUMAR el 30 de Sept. de 2018
Commented lines are the python code and uncommented lines are the matlab codes. There are few python functions which you have use like predict_proba and roc_curve for which you have to write these function in matlab.
% y_pred_knn_p =knn.predict_proba(X_test)[:,1]
y_pred_knn_p= predict_proba(X_test); y_pred_knn_p=y_pred_knn_p(:,2); % make sure that you must have predict_proba function. python reads first row or column as 0 but matlab starts with 1.
% models=[y_pred_knn_p]
models=[y_pred_knn_p];
% label=['KNN']
label={'KNN'}
% % # plotting ROC curves
% plt.figure(figsize=(10, 8))
figure()
% m=np.arange(1)
m=1;
% for m in m:
for mm=1:length(m)
mmm=m(mm);
% fpr, tpr,thresholds= metrics.roc_curve(y_test,models[mmm])
[fpr, tpr,thresholds]= roc_curve(y_test,models{mmm}) %if models is in cells then use models{m} otherwise model(:,mmm) can also be use as per your need.
% print('model:',label[mmm])
disp(strcat('model:',label{mmm})) % one can use sprintf to the same
% print('thresholds:',np.round(thresholds,3))
disp(strcat('thresholds:',num2str(round(thresholds,3))))
% print('tpr: ',np.round(tpr,3))
% print('fpr: ',np.round(fpr,3))
% plt.plot(fpr,tpr,label=label[m])
plot(fpr,tpr)
leg=legend(label{mmm})
% plt.xlim([0.0,1.0])
xlim([0 1])
% plt.ylim([0.0,1.0])
ylim([0 1])
% plt.title('ROC curve for Cancer classifer')
title('ROC curve for Cancer classifer')
% plt.xlabel('False positive rate (1-specificity)')
xlabel('False positive rate (1-specificity)')
% plt.ylabel('True positive rate (sensitivity)')
ylabel('True positive rate (sensitivity)')
% plt.legend(loc=4,)
leg.Location='southeast';
end
Hope this helps you. If you are still facing problem, then comeup with some maltab code so that you can get help a bit more effectively.

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