PyData Tel Aviv Meetup: SHAP Values for ML Explainability - Adi Watzman
PyData Tel Aviv Meetup #28
2 January 2020
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How do ML models use their features to make predictions?
SHAP opens up the ML black box by providing feature attributions for every prediction of every model. Being a relatively new method ([masked]) , SHAP is gaining popularity extremely quickly thanks to its user-friendly API and theoretical guarantees.
In this talk I will guide your intuition through the exciting theory SHAP is
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