DiCE
Model explanations
Provides counterfactual explanations for machine learning models to facilitate interpretability and understanding.
Generate Diverse Counterfactual Explanations for any machine learning model.
1k stars
19 watching
188 forks
Language: Python
last commit: 7 months ago counterfactual-explanationsdeep-learningexplainable-aiexplainable-mlinterpretable-machine-learningmachine-learningxai
Related projects:
Repository | Description | Stars |
---|---|---|
jphall663/interpretable_machine_learning_with_python | Teaching software developers how to build transparent and explainable machine learning models using Python | 673 |
pbiecek/xaiaterum2020 | An R package and workshop materials for explaining machine learning models using explainable AI techniques | 52 |
h2oai/mli-resources | Provides tools and techniques for interpreting machine learning models | 484 |
modeloriented/dalex | A tool to help understand and explain the behavior of complex machine learning models | 1,375 |
marcelrobeer/contrastiveexplanation | Provides explanations for why an instance has a certain outcome by contrasting it with what would have happened if the outcome had been different. | 45 |
csinva/imodels | An open-source package that provides interpretable machine learning models compatible with scikit-learn. | 1,399 |
modeloriented/modelstudio | A tool for creating interactive, model-agnostic explanations of machine learning models in R | 326 |
interpretml/interpret | An open-source package for explaining machine learning models and promoting transparency in AI decision-making | 6,296 |
giuseppec/iml | Provides methods to interpret and explain the behavior of machine learning models | 492 |
ethicalml/xai | An eXplainability toolbox for machine learning that enables data analysis and model evaluation to mitigate biases and improve performance | 1,125 |
explainx/explainx | Provides a framework to understand and explain the behavior of machine learning models used in data science applications. | 417 |
mayer79/flashlight | A toolset for understanding and interpreting complex machine learning models | 22 |
neulab/explainaboard | An interactive tool to analyze and compare the performance of natural language processing models | 361 |
applieddatasciencepartners/xgboostexplainer | Provides tools to understand and interpret the decisions made by XGBoost models in machine learning | 252 |
blent-ai/alepython | An ALE plot generation tool for explaining machine learning model predictions | 158 |