Replies: 1 comment 1 reply
-
Is it due to random state? |
Beta Was this translation helpful? Give feedback.
1 reply
Sign up for free
to join this conversation on GitHub.
Already have an account?
Sign in to comment
Uh oh!
There was an error while loading. Please reload this page.
-
Hi there!
After running Flaml on RF only, I get the following best parameters:
best_hyperparams={"subsample": 1.0, "num_leaves": 256, "n_estimators": 300, "min_split_gain": 0.0, "min_child_samples": 30, "max_depth": -1, "learning_rate": 0.01, "colsample_bytree": 1}
But when I try to reproduce those predictions with the same parameters using sklearn rf , I get quite different results. For instance, I get only 3 to 4 different predictions while those from Flaml were close to a random distribution.
What else Flaml does that the RF doesn't? Is there some additional post-processing done by Flaml?
Note: I already pre-process my data by removing rows with empty data and normalizing the dataset (for both for Flaml and RF).
Thanks
Beta Was this translation helpful? Give feedback.
All reactions