Examples of techniques for training interpretable ML models, explaining ML models, and debugging ML models for accuracy, discrimination, and security.
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Updated
Aug 11, 2020 - Jupyter Notebook
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Examples of techniques for training interpretable ML models, explaining ML models, and debugging ML models for accuracy, discrimination, and security.
Multicycles.org aggregates on one map, more than 100 share vehicles like bikes, scooters, mopeds and cars. Demo APP for the Data Flow API, see https://flow.fluctuo.com
C# LIME protocol implementation
Local Interpretable (Model-agnostic) Visual Explanations - model visualization for regression problems and tabular data based on LIME method. Available on CRAN
Application of the LIME algorithm by Marco Tulio Ribeiro, Sameer Singh, Carlos Guestrin to the domain of time series classification
Adversarial Attacks on Post Hoc Explanation Techniques (LIME/SHAP)
2D OpenGL Render Library in haxe/lime - old origin version
FastAI Model Interpretation with LIME
Techniques & resources for training interpretable ML models, explaining ML models, and debugging ML models.
In this work, we propose a deterministic version of Local Interpretable Model Agnostic Explanations (LIME) and the experimental results on three different medical datasets shows the superiority for Deterministic Local Interpretable Model-Agnostic Explanations (DLIME).
An example of how the LIME algorithm can be used to provide real-world insight into the decision processes of a 'black-box' machine learning algorithm - in this case a Radom Forest regressor.
General-purpose library for extracting interpretable models from Multi-Agent Reinforcement Learning systems
Using LIME (Local Interpretable Model-Agnostic Explanations) for text data
Interpretability of Image Keras Models
Explaining complex ML models
Interpreting Machine Learning models
Compare traditional neural networks with self explaining neural networks in terms of performance and interpretability.
A comprehensive Churn Classification solution aimed at laying out the steps of a classification solution, including EDA, Stratified train test split, Training multiple classifiers, Evaluating trained classifiers, Hyperparameter tuning, Optimal probability threshold tuning, model comparison, model selection and Whiteboxing models for business sense. (Python)
Overview of different model interpretability libraries.
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