MLPs for CTR
In this exercise, you will evaluate both the accuracy score and AUC of the ROC curve for a basic MLP model on the ad CTR dataset. Remember to standardize the features before splitting into training and testing!
X
is available as the DataFrame with features, and y
is available as a DataFrame with target values. Both sklearn
and pandas
as pd
are also available in your workspace.
Cet exercice fait partie du cours
Predicting CTR with Machine Learning in Python
Exercice interactif pratique
Essayez cet exercice en complétant cet exemple de code.
# Scale features and split into training and testing
X_scaled = ____().____(X)
X_train, X_test, y_train, y_test = ____(
X_scaled, y, test_size = .2, random_state = 0)