Hi, i am doing a regression problem with various models on a small dataset of less than 100 rows with 7 features. The MAE and RMSE are the scorers in the GridSearchCV using LOOCV.
Turns out that the test scores are better than the train scores for split ratio 0.05 and 0.1, but the opposite way for split ratios 0.2 to 0.6.
How do i interpret this to decide which split ratio to use? In this case less than 10% is better or greater is better?
I plotted below graphs to visualize the problem i tried to describe above, appreciate some guidance..
Deciding which split ratio to use in hind sight of MAE and RMSE values
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 Joined: Sat Jul 10, 2021 2:40 am
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