Group K-Fold Cross-Validation is beneficial when dealing with:Review LaterClass imbalanceTime series dataCorrelated or dependent data pointsLarge datasets
Question
Solution 1
Group K-Fold Cross-Validation is beneficial when dealing with correlated or dependent data points.
Here's why:
- In standard K-Fold Cross-Validation, the data is randomly split into 'K' groups or folds. Therefore, if the data points have some form of correlation or dependency on each other, this Knowee AI is a powerful AI-powered study tool designed to help you to solve study problem.
Knowee AI is a powerful AI-powered study tool designed to help you to solve study problem.
Knowee AI is a powerful AI-powered study tool designed to help you to solve study problem.
Knowee AI is a powerful AI-powered study tool designed to help you to solve study problem.
Knowee AI is a powerful AI-powered study tool designed to help you to solve study problem.
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