We propose a novel method for explaining the predictions of any classifier. In our approach, local explanations are expected to explain both the outcome of a prediction and how that prediction would change if athings had been different'. Furthermore, we argue that satisfactory explanations cannot be dissociated from a notion and measure of fidelity, as advocated in the early days of neural networks' knowledge extraction. We introduce a definition of fidelity to the underlying classifier for local explanation models which is based on distances to a target decision boundary. A system called CLEAR: Counterfactual Local Explanations via Regression, is introduced and evaluated. CLEAR generates b-counterfactual explanations that state minimum cha...
We examine counterfactual explanations for explaining the decisions made by model-based AI systems. ...
A method for counterfactual explanation of machine learning survival models is proposed. One of the ...
The rise of sophisticated machine learning models has brought accurate but obscure decision systems,...
Machine learning plays a role in many deployed decision systems, often in ways that are difficult or...
The field of Explainable Artificial Intelligence (XAI) tries to make learned models more...
Counterfactual explanations are a prominent example of post-hoc interpretability methods in the expl...
Increasingly in recent times, the mere prediction of a machine learning algorithm is considered insu...
The use of counterfactual explanations (CFXs) is an increasingly popular explanation strategy for ma...
Counterfactual explanations focus on 'actionable knowledge' to help end-users understand how a machi...
Nowadays, machine learning is being applied in various domains, including safety critical areas, whi...
Abstract—Counterfactual explanations focus on “actionable knowledge” to help end-users understand ho...
International audienceCounterfactual explanation is a common class of methods to make local explanat...
International audienceRecent efforts have uncovered various methods for providing explanations that ...
Counterfactual explanations are gaining popularity as a way of explaining machine learning models. C...
Explanations in machine learning come in many forms, but a consensus regarding their desired propert...
We examine counterfactual explanations for explaining the decisions made by model-based AI systems. ...
A method for counterfactual explanation of machine learning survival models is proposed. One of the ...
The rise of sophisticated machine learning models has brought accurate but obscure decision systems,...
Machine learning plays a role in many deployed decision systems, often in ways that are difficult or...
The field of Explainable Artificial Intelligence (XAI) tries to make learned models more...
Counterfactual explanations are a prominent example of post-hoc interpretability methods in the expl...
Increasingly in recent times, the mere prediction of a machine learning algorithm is considered insu...
The use of counterfactual explanations (CFXs) is an increasingly popular explanation strategy for ma...
Counterfactual explanations focus on 'actionable knowledge' to help end-users understand how a machi...
Nowadays, machine learning is being applied in various domains, including safety critical areas, whi...
Abstract—Counterfactual explanations focus on “actionable knowledge” to help end-users understand ho...
International audienceCounterfactual explanation is a common class of methods to make local explanat...
International audienceRecent efforts have uncovered various methods for providing explanations that ...
Counterfactual explanations are gaining popularity as a way of explaining machine learning models. C...
Explanations in machine learning come in many forms, but a consensus regarding their desired propert...
We examine counterfactual explanations for explaining the decisions made by model-based AI systems. ...
A method for counterfactual explanation of machine learning survival models is proposed. One of the ...
The rise of sophisticated machine learning models has brought accurate but obscure decision systems,...