Efficient R implementation of SHAP
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Updated
May 31, 2024 - R
Efficient R implementation of SHAP
Compute SHAP values for your tree-based models using the TreeSHAP algorithm
An R package which provides a a neural network framework based on Generalized Additive Models
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This repository consists the supplemental materials of the paper "Decomposition of Expected Goal Models: Aggregated SHAP Values for Analyzing Scoring Potential of Player/Team".
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