Robust computation of the probability weights#12
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NglQ wants to merge 1 commit intosocialfoundations:mainfrom
Open
Robust computation of the probability weights#12NglQ wants to merge 1 commit intosocialfoundations:mainfrom
NglQ wants to merge 1 commit intosocialfoundations:mainfrom
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Robust probability computation of weights
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Thanks for reporting this bug! |
AndreFCruz
reviewed
Sep 10, 2024
| f"Target was {target_point}; got {all_weights @ all_points}." | ||
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| if (all_weights < 0).any(): |
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Did you ever encounter a scenario where any weights were negative? And if so, could you post a code example?
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Robust probability computation of weights
The issue has been found using "ACSDataSource(survey_year='2018', horizon='1-Year', survey='person')" as dataset, with the basic problem "ACSEmployment". The split is 70-10-20 using the function train_test_split of sklearn with shuffle=True, stratify on sensitive attribute (RAC1P) and seed 42. Moreover, the RelaxedThreshold had equalized odds as constraint and threshold 1.0 (The experiment involves FairGBM as model).