Please explain the use of score a holdout data set.
Greetings.
The use of holdout data is to see how well a model will generalize and perform on data that was not trained upon. This aids in the prevention of overfitting a model and being subjected to a false sense of accuracy in how well a model is performing.
Hope this helps.
Greetings.
The use of holdout data is to see how well a model will generalize and perform on data that was not trained upon. This aids in the prevention of overfitting a model and being subjected to a false sense of accuracy in how well a model is performing.
Hope this helps.
Registration is now open for SAS Innovate 2025 , our biggest and most exciting global event of the year! Join us in Orlando, FL, May 6-9.
Sign up by Dec. 31 to get the 2024 rate of just $495.
Register now!
Use this tutorial as a handy guide to weigh the pros and cons of these commonly used machine learning algorithms.
Find more tutorials on the SAS Users YouTube channel.