Skip to content

adding categorical compatibility in xgboost trainer#2

Open
anupriyatripathi wants to merge 1 commit intooloBion:masterfrom
anupriyatripathi:pyretip-category-desc
Open

adding categorical compatibility in xgboost trainer#2
anupriyatripathi wants to merge 1 commit intooloBion:masterfrom
anupriyatripathi:pyretip-category-desc

Conversation

@anupriyatripathi
Copy link

@anupriyatripathi anupriyatripathi commented Aug 13, 2024

This PR addresses the errors encountered during xgboost training for the columns ['Lipinski', 'GhoseFilter'] as they're categorical.

Addresses this error while training:

ValueError: DataFrame.dtypes for data must be int, float, bool or category. When categorical type is supplied, The experimental DMatrix parameterenable_categoricalmust be set toTrue. Invalid columns:Lipinski: object, GhoseFilter: object

Sign up for free to join this conversation on GitHub. Already have an account? Sign in to comment

Labels

None yet

Projects

None yet

Development

Successfully merging this pull request may close these issues.

1 participant