SHAP: Shapley Values in Machine Learning - podcast episode cover

SHAP: Shapley Values in Machine Learning

May 13, 201819 min
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Episode description

Shapley values in machine learning are an interesting and useful enough innovation that we figured hey, why not do a two-parter? Our last episode focused on explaining what Shapley values are: they define a way of assigning credit for outcomes across several contributors, originally to understand how impactful different actors are in building coalitions (hence the game theory background) but now they're being cross-purposed for quantifying feature importance in machine learning models. This episode centers on the computational details that allow Shapley values to be approximated quickly, and a new package called SHAP that makes all this innovation accessible.
SHAP: Shapley Values in Machine Learning | Linear Digressions podcast - Listen or read transcript on Metacast