counterfactualrammeverk
Counterfactualrammeverk, often abbreviated as CRF, refers to a computational framework used for analyzing and generating counterfactual explanations. A counterfactual explanation is a statement that describes the smallest change to an instance's features that would alter the prediction of a machine learning model. The goal of a counterfactualrammeverk is to systematically find such minimal changes.
These frameworks typically involve defining an objective function that balances two main criteria: proximity and actionability.
Counterfactualrammeverk plays a crucial role in explainable artificial intelligence (XAI) by providing actionable insights into model