Variable Importance Plots (VIPs)
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Updated
Oct 30, 2023 - R
Variable Importance Plots (VIPs)
Fast approximate Shapley values in R
Explainable Machine Learning in Survival Analysis
SurvSHAP(t): Time-dependent explanations of machine learning survival models
Variable importance through targeted causal inference, with Alan Hubbard
🎯🎓 Generalized Targeted Learning Framework
Routines and data structures for using isarn-sketches idiomatically in Apache Spark
Stability Selection with Error Control
Perform inference on algorithm-agnostic variable importance
Perform inference on algorithm-agnostic variable importance in Python
Filter-based feature selection for mlr3
Code for Variable Selection in Black Box Methods with RelATive cEntrality (RATE) Measures
Code for the paper 'Variable Selection with Copula Entropy' published on Chinese Journal of Applied Probability and Statistics
🎯 🎲 Targeted Learning of the Causal Effects of Stochastic Interventions
Variable importance via oscillations
📦 🎲 R/txshift: Efficient Estimation of the Causal Effects of Stochastic Interventions, with Corrections for Outcome-Dependent Sampling
We used different machine learning approaches to build models for detecting and visualizing important prognostic indicators of breast cancer survival rate. This repository contains R source codes for 5 steps which are, model evaluation, Random Forest further modelling, variable importance, decision tree and survival analysis. These can be a pipe…
🎯 💯 Targeted Learning and Variable Importance for the Causal Effect of an Optimal Individualized Treatment Intervention
Dimension Reduction Forests
Simulating Supervised Learning Data
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