I would like to know how Keras computes the validation and training accuracies for multi-class classification problems (i.e., the function used). I set my model compile as follows:
model.compile(optimizer=Adam(lr=0.001), loss='categorical_crossentropy', metrics=['accuracy'])
But I am trying to understand how is the validation accuracy and training accuracy is computed (i.e., explicit formulae).
I know the validation and training loss are determined by the
categorical_crossentropy, but I am not sure about the accuracies.
Note: this is NOT a duplicate of this post. My question is looking for an explanation of the Python function used by Keras to compute accuracy, not the theoretical details given in the mentioned post.