gtolomei / ml-feature-tweaking
This repository contains the source code associated with the method proposed by Tolomei et al. in their KDD 2017 research paper entitled "Interpretable Predictions of Tree-based Ensembles via Actionable Feature Tweaking"
☆17Updated 5 years ago
Related projects ⓘ
Alternatives and complementary repositories for ml-feature-tweaking
- Python library to explain Tree Ensemble models (TE) like XGBoost, using a rule list.☆44Updated 7 months ago
- Implementation of algorithms from the paper "Globally-Consistent Rule-Based Summary-Explanations for Machine Learning Models: Application…☆24Updated 2 years ago
- XAI Stories. Case studies for eXplainable Artificial Intelligence☆29Updated 4 years ago
- Code for blog posts.☆17Updated last year
- Preprint/draft article/blog on some explainable machine learning misconceptions. WIP!☆28Updated 5 years ago
- repository for R library "sbrlmod"☆25Updated 6 months ago
- Python Interface of the Scalable Bayesian Rule Lists☆19Updated 4 years ago
- Paper and talk from KDD 2019 XAI Workshop☆20Updated 4 years ago
- Scripts for ECML PKDD 2018 article: Similarity encoding for learning with dirty categorical variables☆11Updated 6 years ago
- Model Agnostic Counterfactual Explanations☆87Updated 2 years ago
- Born-Again Tree Ensembles: Transforms a random forest into a single, minimal-size, tree with exactly the same prediction function in the …☆64Updated last year
- Code associated with paper: Plug-in Regularized Estimation of High-Dimensional Parameters in Nonlinear Semiparametric Models, Chernozhuk…☆15Updated 3 years ago
- Surrogate Assisted Feature Extraction☆36Updated 3 years ago
- Online Ranking with Multi-Armed-Bandits☆19Updated 3 years ago
- Multi-Objective Counterfactuals☆40Updated 2 years ago
- Practical ideas on securing machine learning models☆36Updated 3 years ago
- A Python Package providing two algorithms, DAME and FLAME, for fast and interpretable treatment-control matches of categorical data☆57Updated 5 months ago
- ☆16Updated 2 years ago
- An R package for computing asymmetric Shapley values to assess causality in any trained machine learning model☆71Updated 4 years ago
- 💊 Comparing causality methods in a fair and just way.☆138Updated 4 years ago
- How to use SHAP values for better cluster analysis☆54Updated 2 years ago
- The cause2e package provides tools for performing an end-to-end causal analysis of your data. Developed by Daniel Grünbaum (@dg46).☆57Updated last year
- ☆8Updated 5 years ago
- python tools to check recourse in linear classification☆75Updated 3 years ago
- Helpers for scikit learn☆16Updated last year
- Public home of pycorels, the python binding to CORELS☆75Updated 4 years ago
- ☆15Updated 5 years ago
- [ACM 2024] Jurity: Fairness & Evaluation Library☆49Updated last month
- A very simple library for exploiting graph-of-words in NLP☆12Updated 3 years ago
- ☆29Updated 7 months ago