Crack the matrix
Visual representations are a great and intuitive way to assess results. One way to visualize and assess the performance of your model is by using a confusion matrix. In this exercise, you will create the confusion matrix of your predicted values to see in which cases it performs well and in which cases it doesn't.
The result of the previous exercise, predictions_combined, is still loaded.
Questo esercizio fa parte del corso
Machine Learning with Tree-Based Models in R
Esercizio pratico interattivo
Prova a risolvere questo esercizio completando il codice di esempio.
# The confusion matrix
diabetes_matrix <- ___(___,
___,
___)
# Print the matrix
___