I'm relatively new to scikit learn/machine learning. I have to create a decision tree using the Titanic dataset, and it needs to use KFold cross validation with 5 folds. Here's what I have so far:
cv = KFold(n_splits=5) tree_model = tree.DecisionTreeClassifier(max_depth=3) print(titanic_train.describe()) fold_accuracy =  for train_index, valid_index in cv.split(X_train): train_x,test_x = X_train.iloc[train_index],X_train.iloc[valid_index] train_y,test_y= y_train.iloc[train_index], y_train.iloc[valid_index] model = tree_model.fit(train_x,train_y) valid_acc = model.score(test_x,test_y) fold_accuracy.append(valid_acc) print(confusion_matrix(y_test,model.predict(X_test))) print("Accuracy per fold: ", fold_accuracy, "\n") print("Average accuracy: ", sum(fold_accuracy)/len(fold_accuracy)) dot_data = StringIO()
my question is, does my fitted model only exist within the loop? I need to accurately predict from a test training set provided where "Survived" is unlabeled (in the confusion matrix, X_Test is the test data set X values and y_test is the actual survival rate), and I'm unsure that by training using this method, that my main classifier (tree_model) is being trained using each set in the fold.