I have read on the several answers here and on the internet that cross-validation helps to indicate that if the model will generalize well or not and about overfitting.
But I am confused that which two accuracies/errors amoung test/training/validation should I compare to be able to see if the model is overfitting or not?
For example:
I divide my data for 70% training and 30% test.
When I get to run 10 fold cross-validation, I get 10 accuracies that I can take the average/mean of. should I call this mean as validation accuracy
?
Afterward, I test the model on 30% test data and get Test Accuracy
.
In this case, what will be training accuracy
? and which two accuracies I compare to see if the model is overfitting or not?
This is my first question on this platform so please ignore errors.