NLeSC / XAI
Prototyping about eXplainable Artificial Inteligence (XAI)
☆26Updated last year
Related projects ⓘ
Alternatives and complementary repositories for XAI
- This is a public collection of papers related to machine learning model interpretability.☆25Updated 2 years ago
- Code/figures in Right for the Right Reasons☆55Updated 3 years ago
- Code and data for the experiments in "On Fairness and Calibration"☆50Updated 2 years ago
- Using / reproducing DAC from the paper "Disentangled Attribution Curves for Interpreting Random Forests and Boosted Trees"☆27Updated 3 years ago
- ☆131Updated 5 years ago
- Automatically modelling and distilling knowledge within AI. In other words, summarising the AI research firehose.☆21Updated 5 years ago
- Supervised Local Modeling for Interpretability☆28Updated 6 years ago
- A lightweight implementation of removal-based explanations for ML models.☆57Updated 3 years ago
- Codes for reproducing the contrastive explanation in “Explanations based on the Missing: Towards Contrastive Explanations with Pertinent…☆54Updated 6 years ago
- Train a simple convnet on the MNIST dataset and evaluate the BALD acquisition function☆15Updated 7 years ago
- Using / reproducing ACD from the paper "Hierarchical interpretations for neural network predictions" 🧠 (ICLR 2019)☆125Updated 3 years ago
- This is a benchmark to evaluate machine learning local explanaitons quality generated from any explainer for text and image data☆30Updated 3 years ago
- python tools to check recourse in linear classification☆75Updated 3 years ago
- A Python package for unwrapping ReLU DNNs☆70Updated 10 months ago
- ☆26Updated 5 years ago
- To Trust Or Not To Trust A Classifier. A measure of uncertainty for any trained (possibly black-box) classifier which is more effective t…☆173Updated last year
- Preprint/draft article/blog on some explainable machine learning misconceptions. WIP!☆28Updated 5 years ago
- Code for reproducing results in Delayed Impact of Fair Machine Learning (Liu et al 2018)☆14Updated 2 years ago
- ☆45Updated 5 years ago
- CEML - Counterfactuals for Explaining Machine Learning models - A Python toolbox☆42Updated 3 months ago
- This repository contains implementations of algorithms proposed in recent papers from top machine learning conferences on Fairness, Accou…☆33Updated 2 years ago
- Code for "Evaluating Explainable AI: Which Algorithmic Explanations Help Users Predict Model Behavior?"☆44Updated 10 months ago
- Code for paper EDDI: Efficient Dynamic Discovery of High-Value Information with Partial VAE☆37Updated last year
- Tools for training explainable models using attribution priors.☆121Updated 3 years ago
- A tiny module for machine learning experiment orchestration☆63Updated 5 years ago
- Contrastive Explanation (Foil Trees), developed at TNO/Utrecht University☆45Updated last year
- ☆16Updated 10 months ago
- ☆73Updated 4 years ago
- Code for paper [Explaining image classifiers by removing input features using generative models] [ACCV 2020] https://arxiv.org/abs/1910.0…☆15Updated 2 years ago
- Mixture Density Networks (Bishop, 1994) tutorial in JAX☆58Updated 4 years ago