Chap. 3 Flashcards
1
Q
what is Cross-validation?
A
to evaluate a model on unseen data by spliting the dataset into a number of training and validation sets and to evaluate the performance of the model on the these sets.
This will help with
1- Best hyper-parameters
2- Avoid overfitting the model to a single training data.
2
Q
what is Hyper-parameter?
A
Hyper-parameter tuning is a process of finding the optimal values for the parameters that control the behavior of the model. by experimenting with different values for the hyper-parameters such as the learning rate, regularization, and number of latent factors to find the combination that results in the best performance.