8

I am using PyCaret and get an error.

AttributeError: 'SimpleImputer' object has no attribute '_validate_data'

Trying to create a basic instance.

# Create a basic PyCaret instance
import pycaret
from pycaret.regression import *
mlb_pycaret = setup(data = pycaret_df, target = 'pts', train_size = 0.8, numeric_features = ['home', 
'first_time_pitcher'], session_id = 123)

All my variables are numeric (I coerced two of them, which are boolean). My target variable is label and this is by default.

I also installed PyCaret, imported its regression, and re-installed scikit learn, imported SimpleImputer as from sklearn.impute import SimpleImputer

OBP_avg Numeric
SLG_avg Numeric
SB_avg  Numeric
RBI_avg Numeric
R_avg   Numeric
home    Numeric
first_time_pitcher  Numeric
park_ratio_OBP  Numeric
park_ratio_SLG  Numeric
SO_avg_p    Numeric
pts_500_parkadj_p   Numeric
pts_500_parkadj Numeric
SLG_avg_parkadj Numeric
OPS_avg_parkadj Numeric
SLG_avg_parkadj_p   Numeric
OPS_avg_parkadj_p   Numeric
pts_BxP Numeric
SLG_BxP Numeric
OPS_BxP Numeric
whip_SO_BxP Numeric
whip_SO_B   Numeric
whip_SO_B_parkadj   Numeric
order   Numeric
ops x pts_500 order15   Numeric
ops x pts_500 parkadj   Numeric
ops23 x pts_500 Numeric
ops x pts_500 orderadj  Numeric
whip_p  Numeric
whip_SO_p   Numeric
whip_SO_parkadj_p   Numeric
whip_parkadj_p  Numeric
pts Label

My traceback is the following:

5
  • 1
    Why did you import pycaret first and what version of scikit-learn is being used by the environment? Have you tried skipping the numeric_features parameter? What about trying the numeric_iterative_imputer and numeric_imputation parameters? Commented Nov 25, 2020 at 21:19
  • @MarkMoretto, I tried to skip numeric_features. It does not help. I have the same error, but with a much longer traceback. I intentionally imported pycaret and its regression right above the code, because in the past order mattered too. If I skip numeric features, home is treated as categorical and that second variable does not have class at all. I am not sure why pts is a label, because I am not doing classification (maybe it is fine). Parameters you mentioned are in clustering for PyCaret, I am not sure it will help here. Commented Nov 25, 2020 at 21:48
  • 1
    @MarkMoretto, I dropped half of variables with high correlation and everything worked perfectly. What happened? No clue. Commented Nov 26, 2020 at 5:44
  • Sweet! I was curious whether it would be a version issue since my installation also didn't have that function. But, I'm glad to hear you got it working! Commented Nov 27, 2020 at 1:43
  • Likely wrong version of sklearn. It should be 0.23.2 right now and not 0.24 (6/2021). Commented Jun 12, 2021 at 23:13

4 Answers 4

13

The problem here is with the imputation. The default per pycaret documentation is 'simple' but in this case, you need to make that imputation_type='iterative' for it to work.

2
  • 2
    This works, but it may also be that your version of sklearn is wrong. As of 6/2021 it should be version 0.23.2, not the 0.24 version. Using 0.24 at this time will cause the same error. Commented Jun 12, 2021 at 23:13
  • I changed like you said, but now I got another problem: ModuleNotFoundError: No module named 'sklearn.kernel_ridge'
    – igorkf
    Commented Sep 1, 2021 at 2:22
1

It's incompatibility of library, install pycaret again with: pip install pycaret pandas shap

1
  • 1
    Your answer could be improved with additional supporting information. Please edit to add further details, such as citations or documentation, so that others can confirm that your answer is correct. You can find more information on how to write good answers in the help center.
    – Community Bot
    Commented Nov 20, 2021 at 20:45
1

Good day all. What helped me is installing pycaret=='2.3.10 ' and scikit-learn='0.23.2' at the same time. These two version are compatible and all works fine. I installed scikit-learn using conda as the older versions are not available through pip, and I installed Pycaret using pip3. I hope this helps all who have struggled to get this working like I did.

1
  • This is the answer for me.
    – Zac
    Commented Sep 20, 2022 at 22:01
1

Here is what worked for me on this error:

go to line 568 in your base file here: C:\Users\Eric.conda\envs\AUTOGLUON\lib\site-packages\sklearn\impute_base.py then search for the following line of code:

"if self.strategy == "constant" or self.keep_empty_features:"

Perform the following change, then save the file:

Change this:

    if self.strategy == "constant" or self.keep_empty_features:
        valid_statistics = statistics
        valid_statistics_indexes = None

To this:

    if self.strategy == "constant" or (hasattr(self, 'keep_empty_features') and self.keep_empty_features):
        valid_statistics = statistics
        valid_statistics_indexes = None

Save changes. Then, restart the Python kernel for the notebook, and run the code again. It should now work.... Or at least I hope it does for you

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