What is the primary advantage of using k-fold cross-validation over a single train-test split in model evaluation?
A. K-fold cross-validation prevents data leakage
B. K-fold cross-validation reduces computational resources
C. K-fold cross-validation reduces model complexity
D. K-fold cross-validation requires less training data
Answer: Option A
Related Questions on Model Evaluation and Validation
What is the primary purpose of a validation dataset in machine learning?
A. To train the model
B. To evaluate the model on unseen data
C. To test the model's performance on training data
D. To visualize data relationships
A. Accuracy
B. Precision
C. Recall
D. F1 Score
A. It reduces the risk of overfitting
B. It reduces the number of folds used in training
C. It increases the model's complexity
D. It decreases the training time
A. Leave-One-Out Cross-Validation (LOOCV)
B. Stratified Sampling
C. Holdout Validation
D. Feature Scaling

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