We examine counterfactual explanations for explaining the decisions made by model-based AI systems. The counterfactual approach we consider defines an explanation as a set of the system’s data inputs that causally drives the decision (i.e., changing the inputs in the set changes the decision) and is irreducible (i.e., changing any subset of the inputs does not change the decision). We (1) demonstrate how this framework may be used to provide explanations for decisions made by general data-driven AI systems that can incorporate features with arbitrary data types and multiple predictive models, and (2) propose a heuristic procedure to find the most useful explanations depending on the context. We then contrast counterfactual explanations with...
Explaining the predictions of opaque machine learning algorithms is an important and challenging tas...
Advanced AI models are powerful in making accurate predictions for complex problems. However, these ...
We recommend using a model-centric, Boolean Satisfiability (SAT) formalism to obtain useful explanat...
Explanation mechanisms from the field of Counterfactual Thinking are a widely-used paradigm for Expl...
Recent work on interpretability in machine learning and AI has focused on the building of simplified...
Recent work on interpretability in machine learning and AI has focused on the building of simplified...
Machine learning plays a role in many deployed decision systems, often in ways that are difficult or...
Counterfactual explanations are a prominent example of post-hoc interpretability methods in the expl...
There has been a historic focus among explainable artificial intelligence practitioners to increase ...
International audienceRecent efforts have uncovered various methods for providing explanations that ...
Counterfactual explanations (CEs) are an increasingly popular way of explaining machine learning cla...
Deep learning models have achieved high performance across different domains, such as medical decisi...
Explainable AI (XAI) has grown as an important field over the years. As more complicated AI systems ...
We propose a novel method for explaining the predictions of any classifier. In our approach, local e...
Counterfactual (CF) explanations have been employed as one of the modes of explainability in explain...
Explaining the predictions of opaque machine learning algorithms is an important and challenging tas...
Advanced AI models are powerful in making accurate predictions for complex problems. However, these ...
We recommend using a model-centric, Boolean Satisfiability (SAT) formalism to obtain useful explanat...
Explanation mechanisms from the field of Counterfactual Thinking are a widely-used paradigm for Expl...
Recent work on interpretability in machine learning and AI has focused on the building of simplified...
Recent work on interpretability in machine learning and AI has focused on the building of simplified...
Machine learning plays a role in many deployed decision systems, often in ways that are difficult or...
Counterfactual explanations are a prominent example of post-hoc interpretability methods in the expl...
There has been a historic focus among explainable artificial intelligence practitioners to increase ...
International audienceRecent efforts have uncovered various methods for providing explanations that ...
Counterfactual explanations (CEs) are an increasingly popular way of explaining machine learning cla...
Deep learning models have achieved high performance across different domains, such as medical decisi...
Explainable AI (XAI) has grown as an important field over the years. As more complicated AI systems ...
We propose a novel method for explaining the predictions of any classifier. In our approach, local e...
Counterfactual (CF) explanations have been employed as one of the modes of explainability in explain...
Explaining the predictions of opaque machine learning algorithms is an important and challenging tas...
Advanced AI models are powerful in making accurate predictions for complex problems. However, these ...
We recommend using a model-centric, Boolean Satisfiability (SAT) formalism to obtain useful explanat...