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Scan: Add a robustness detector to the scan that perturbs numerical values #1846
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Hey @kevinmessiaen! This seems to be a duplicate of #1847 |
@pranavm7 Hey, it's not exactly the same. One is for numerical values and the other is for categorical ones which differs a bit. We would be happy to have you contribute on this tool, do you have any improvement ideas in mind? |
@kevinmessiaen I would like to work on this if this is still open. |
@Kranium2002 Sure we appreciate that, I assigned you to the issue. Let me know if you have some questions or need some help! |
I would be working on adding a numerical perturbation detector to test model robustness by tweaking numerical features and seeing how much the model's predictions shift by around 1 %. For classification models, it'll flag cases where the predicted label changes, and for regression, it'll detect when predictions differ beyond a threshold (like 5%). I'll integrate this into the existing framework so it reports any significant sensitivity issues. Plus, I'll build out tests to ensure it's flexible across model types and datasets. PS: Do I make the thresholds of 1 and 5 % editable by the user or do I keep them fixed? |
Working on this in #2040 |
🚀 Feature Request
Add a robustness detector to the scan that perturbs numerical values.
The scan should be able to a set of issues that capture the minimum amount of perturbation (lying in the bounds of the feature distribution) needed on a single numerical feature to:
🔈 Motivation
Currently the scan does not have any numerical perturbation.
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