Effacer les filtres
Effacer les filtres

Why testing accuracy is 0.000?

1 vue (au cours des 30 derniers jours)
Sanchit
Sanchit le 9 Juil 2023
Commenté : Aniketh le 10 Juil 2023
I am attaching the matlab code and input file. This code is not giving any error and running very smoothly. However, It is giving testing accuracy 0.000
Out-of-Bag Error: 0.0412
Out-of-Bag Classification Error: 0.6729
Training Accuracy: 0.9588
Testing Accuracy: 0.0000
is it okey or some problem in computing testing error?
please suggest me.
Sanchit

Réponse acceptée

Aniketh
Aniketh le 9 Juil 2023
Hi Sanchit,
It seems the problem in your code is in the respective datatypes of y_test.Var11 and y_pred.
To address this problem, let's examine the code and make the necessary corrections. In the original code, the line test_accuracy = sum(strcmp(y_pred, y_test.Var11)) / numel(y_test.Var11); is used to calculate the testing accuracy. However, based on the given information, it appears that y_test.Var11 contains numeric values, while y_pred contains cell arrays of strings.
y_test_str = cellfun(@num2str, num2cell(y_test.Var11), 'UniformOutput', false);
test_accuracy = sum(strcmp(y_pred, y_test_str)) / numel(y_test_str);
fprintf('Testing Accuracy: %.4f\n', test_accuracy);
With this change testing accuracy is being printed correctly, you could employ other methods as well to change the datatypes.
Hope this helped!
  3 commentaires
Sanchit
Sanchit le 10 Juil 2023
I am using below matlab code for mean square error. It is giving mse 0.000 for three different data sets. Therefore, there is some error in code. I request you to kindly have a look on it and suggest me how to fix it.
Sanchit
% Create a Random Forest classifier
rf_classifier = TreeBagger(100, X_train, y_train, 'OOBPrediction', 'On');
predicted = predict(rf_classifier, X_train);
YY = categorical(predicted)
ZZ = str2num(char(YY(:)))
Z = table2array(y_train)
oob_mse = immse(Z,ZZ);
disp(sprintf('Out-of-Bag Mean Square Error: %.4f', oob_mse(end)));
Aniketh
Aniketh le 10 Juil 2023
You're welcome! I'm glad to hear that the solution worked for you.
An equivalent of mse can be done in MATLAB as:
y_train_pred = predict(rf_classifier, X_train);
oob_mse = mean((y_train - y_train_pred).^2);
For the sceond part can't say for sure without looking at the complete code but if you are evaluating on the same dataset that you used for training, it is possible the classifier has learned to predict the training data very well and you are getting a loss as 0.000

Connectez-vous pour commenter.

Plus de réponses (0)

Catégories

En savoir plus sur Introduction to Installation and Licensing dans Help Center et File Exchange

Produits


Version

R2023a

Community Treasure Hunt

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

Start Hunting!

Translated by