Comments (8)
And more think could you label encode the category columns?
I provide you also the Train and Test dataset with proper Ordinal Encoding of the "Income_Category" variable:
X_train_label.csv
X_test_label.csv
y_train.csv
from gan-for-tabular-data.
Hi! Thank you for raising the issue could you provide some data sample to reproduce the problem
I will take a look
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And more think could you label encode the category columns?
from gan-for-tabular-data.
I dont see in your screenshoot that you provided cat_cols = ["Income_Category"]. Have you tried?
from gan-for-tabular-data.
Those are the file used, specifically for Training and Test sets:
y_train.csv
X_train .csv
X_test .csv
from gan-for-tabular-data.
Here the full screenshot, provided with cat_cols = ["Income_Category"]
from gan-for-tabular-data.
Fixed in new version for batch size, due to some several model limitations some batch sizes are not supported
Try new version
!pip install tabgan==1.3.2
from gan-for-tabular-data.
For Ordinal Encoding of the "Income_Category" - everything works like a charm. Reopen with preproducing example maybe in colab
from gan-for-tabular-data.
Related Issues (20)
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- Mistake in Readme HOT 2
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