Fast approximate Shapley values in R
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Updated
May 24, 2025 - R
Fast approximate Shapley values in R
Paper collection of federated learning. Conferences and Journals Collection for Federated Learning from 2019 to 2021, Accepted Papers, Hot topics and good research groups. Paper summary
An R package for computing asymmetric Shapley values to assess causality in any trained machine learning model
Counterfactual SHAP: a framework for counterfactual feature importance
[IJCAI 2024] Redefining Contributions: Shapley-Driven Federated Learning
Weighted Shapley Values and Weighted Confidence Intervals for Multiple Machine Learning Models and Stacked Ensembles
In this paper we researched the accuracy and usability of machine learning models for MMM analyses.
Counterfactual Shapley Additive Explanation: Experiments
Beyond User Self-Reported Likert Scale Ratings: A Comparison Model for Automatic Dialog Evaluation (ACL 2020)
Experimental toolbox for quantum Shapley values.
HERALD: An Annotation Efficient Method to Train User Engagement Predictors in Dialogs (ACL 2021)
A radiomic interpretation tool based on Shapley values
Create beautiful, interactive charts for explainable AI using MLFlow
Shapley-based decomposition to anatomize the of out-of-sample accuracy of time-series forecasting models
Code and experiments related to SHAPEffects paper: 'A feature selection method based on Shapley values robust to concept shift in regression'
Slides for the "Interpretable SDM with Julia" workshop
A Proxy-Based Algorithm for Explaining Survival Models with SHAP
Package to perform sensitivity analysis using Shapley Effect.
Fair and explainable ML workshop
Migration networks and housing prices analysis and ML tools
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